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RESEARCH ARTICLE (Open Access)

Taxonomic revision reveals potential impacts of Black Summer megafires on a cryptic species

Chris J. Jolly https://orcid.org/0000-0002-5234-0897 A B * , Harry A. Moore A C , Mitchell A. Cowan https://orcid.org/0000-0001-8432-5301 A , Teigan Cremona D , Judy A. Dunlop https://orcid.org/0000-0003-4842-0672 A C E , Sarah M. Legge https://orcid.org/0000-0001-6968-2781 D F G , Grant D. Linley A , Vivianna Miritis H , John C. Z. Woinarski D and Dale G. Nimmo A
+ Author Affiliations
- Author Affiliations

A Institute of Land, Water and Society, School of Environmental Science, Charles Sturt University, Albury, NSW 2640, Australia.

B Australian Museum Research Institute, Australian Museum, Sydney, NSW 2010, Australia.

C School of Biological Sciences, University of Western Australia, Crawley, WA 6907, Australia.

D Research Institute for the Environment and Livelihoods, Charles Darwin University, Darwin, NT 0810, Australia.

E Western Australian Feral Cat Working Group, 58 Sutton Street, Mandurah, WA 6210, Australia.

F Centre for Conservation and Biodiversity Conservation Science, University of Queensland, St Lucia, Qld 4072, Australia.

G Fenner School of Society and the Environment, The Australian National University, Acton, ACT 2602, Australia.

H School of Life and Environmental Sciences, The University of Sydney, Camperdown, NSW 2006, Australia.

* Correspondence to: cjolly@csu.edu.au

Handling Editor: Mike Calver

Pacific Conservation Biology 29(1) 17-25 https://doi.org/10.1071/PC21045
Submitted: 13 July 2021  Accepted: 5 December 2021   Published: 6 January 2022

© 2023 The Author(s) (or their employer(s)). Published by CSIRO Publishing. This is an open access article distributed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License (CC BY-NC-ND)

Abstract

Context: Sound taxonomy is the cornerstone of biodiversity conservation. Without a fundamental understanding of species delimitations, as well as their distributions and ecological requirements, our ability to conserve them is drastically impeded. Cryptic species – two or more distinct species currently classified as a single species – present a significant challenge to biodiversity conservation. How do we assess the conservation status and address potential drivers of extinction if we are unaware of a species’ existence? Here, we present a case where the reclassification of a species formerly considered widespread and secure – the sugar glider (Petaurus breviceps) – has dramatically increased our understanding of the potential impacts of the catastrophic 2019–20 Australian megafires to this species.

Methods: We modelled and mapped the distribution of the former and reclassified sugar glider (Petaurus breviceps). We then compared the proportional overlap of fire severity classes between the former and reclassified distribution, and intersected habitat suitability and fire severity to help identify areas of important habitat following the 2019–20 fires.

Key results: Taxonomic revision means that the distribution of this iconic species appears to have been reduced to 8% of its formerly accepted range. Whereas the 2019–20 Australian megafires overlapped with 8% of the formerly accepted range, they overlapped with 33% of the proposed range of the redefined Petaurus breviceps.

Conclusions: Our study serves as a sombre example of the substantial risk of underestimating impacts of mega-disturbance on cryptic species, and hence the urgent need for cataloguing Earth’s biodiversity in the age of megafire.

Keywords: dark extinction, mammal, marsupial, mega-fire, Petauridae, Petaurus breviceps, species distribution model, threat assessment.

Introduction

Sound taxonomy is vital to biodiversity conservation (Garnett and Christidis 2017). It allows clear delineation of species’ distributions and population size, which facilitates assessments of extinction risk and reveals the need for conservation interventions (Mace 2004). Regrettably, there are many examples of species’ decline and extinction being realised only after taxonomic review (Régnier et al. 2015) – sometimes termed ‘dark extinctions’ (Boehm and Cronk 2021). For example, a recent taxonomic revision resulted in elevation to species status of the Christmas Island shrew (Crocidura trichura) a decade or so after the species’ likely extinction (Eldridge et al. 2014). The cryptic treehunter (Cichlocolaptes mazarbarnetti) of northeast Brazil was formally described in 2014 (Barnett and Buzzetti 2014), but has not been sighted since 2007 and is presumed extinct (Lees and Pimm 2015). Cryptic species – two or more similar but distinct species classified as a single species (Bickford et al. 2007) – present a particular challenge to conservation, especially when a species regarded as widespread and secure contains multiple distinct species with far narrower distributions (Beheregaray et al. 2017). As the scale and intensity of disturbance across the globe grows, so too does the risk of losing species to extinction before they are described (Boehm and Cronk 2021).

The 2019–20 Australian megafires commanded global attention. From August 2019 to March 2020, more than 10 million hectares of south-eastern Australia burned in wildfires, much of it at high severity (Nolan et al. 2020; Wintle et al. 2020). These fires affected habitat for 832 native vertebrates, with 70 of these taxa having >30% of their known habitat burned (Ward et al. 2020). While the megafires burned, scientists were in the final stages of re-defining the taxonomy of a charismatic species – the sugar glider (family Petauridae) – previously considered widespread and secure. Using a combination of morphological and genetic data, this taxonomic revision identified these small, arboreal, gliding marsupials to be three distinct but cryptic species (Cremona et al. 2021). This revision saw the previously described northern sugar glider subspecies, Petaurus breviceps ariel elevated to full species [savanna glider Petaurus ariel (Gould, 1842)], the resurrection of a previously synonymised species which occurs across vast areas of eastern Australia, from South Australia to north Queensland (Krefft’s glider Petaurus notatus Peters, 1859), and restriction of the nominate species to coastal areas of New South Wales and southern Queensland [sugar glider P. breviceps (Waterhouse, 1838)] (Cremona et al. 2021). While fires within the Australian government’s preliminary analysis area (i.e. the area within which the bushfire season appeared particularly anomalous) affected both P. notatus and the reclassified P. breviceps, the latter’s distribution appears particularly coincident with the fire-affected areas (Fig. 1).


Fig. 1.  The area burnt by the 2019–20 Australian megafires (red) informed by the Google Earth Engine Burnt Area Map (Department of Industry Planning & Environment (DIPE) 2020) overlayed on the former (light grey) and reclassified (dark grey) geographic range of the sugar glider Petaurus breviceps (Waterhouse, 1838) as described by Cremona et al. (2021). Because sugar gliders were introduced to Tasmania, we excluded all Tasmanian records. Inset: Distributions of the newly resolved species in the sugar glider complex as assigned by Cremona et al. (2021): savanna glider (Petaurus ariel) (green); Krefft’s glider (Petaurus notatus) (blue); and sugar glider (Petaurus breviceps).
Click to zoom

Small gliders are known to be vulnerable to high severity fires, likely due to a combination of direct mortality and loss of key resources (Lindenmayer et al. 2013), especially hollow-bearing trees (Gibbons and Lindenmayer 2002). Given this, and the much narrower proposed distribution of P. breviceps following taxonomic revision, there is an urgent need to re-assess the potential impacts of the 2019–20 Australian megafires on this species. Here, we model and map the distribution of the former and reclassified P. breviceps and calculate the proportion of its habitat that burned during the 2019–20 bushfire season. We compare the proportional overlap of fire severity classes between the former and reclassified P. breviceps distribution and intersect habitat suitability and fire severity to help identify areas of important habitat following the 2019–20 fires. Our study highlights the vital importance of sound taxonomy for measuring the threats posed to species, including those from mega-disturbance.


Methods

Ethical approval

All data used and generated in this study came from publicly accessible repositories (Atlas of Living Australia and Google Earth Engine Burnt Area Mapping) and approval by an animal ethics committee was unnecessary.

Occurrence data

Occurrence records of P. breviceps were collected from the Atlas of Living Australia (https://www.ala.org.au) and were subject to a filtering process. Because sugar gliders were introduced to Tasmania (Campbell et al. 2018), we excluded all Tasmanian records. We then removed dubious records by clipping all records to either the former P. breviceps range (based on IUCN maps; IUCN 2021) or the proposed reclassified P. breviceps range (Cremona et al. 2021) to create two sets of occurrence data (i.e. one each for the former and reclassified P. breviceps). It is worth noting, however, that the reclassified distribution of P. breviceps proposed by Cremona et al. (2021) is an estimate based on genetic and morphological data. Although evidence currently suggests that the Great Dividing Range acts as the western edge of the distribution of P. breviceps (Cremona et al. 2021), we cannot be certain of this. However, for the purposes of this study we have assumed it to be so. In both datasets, records were removed if: (1) they were missing date information or were collected before the year 2000; or (2) they had high locational uncertainty (e.g. vague or inaccurate locations). Records within any 1 × 1 km grid cell were collapsed into a single record. The final filtered data base consisted of 7777 presence records within the formerly considered geographic range, and 5089 within the reclassified range (see Fig. S1).

Geographic range estimation

We mapped the extent of occurrence (EOO) of the former and reclassified P. breviceps using the occurrence datasets. EOO is defined as the area enclosed by the shortest possible boundary containing all sites in which a species is known to be present (IUCN 2021). We calculated EOO as α-hulls (a generalisation of convex polygons that allow for breaks in species ranges), using the ‘alphahull’ package in R ver. 3.6.2 (R Core Team 2021), specifying an α value of two (IUCN 2021). We regarded EOO as preferable to area of occupancy because maps of the latter showed clear spatial bias indicated by high densities of records surrounding major capital cities.

Species distribution modelling

Using the Maxent algorithm, we developed species distribution models (SDMs) based on the two occurrence datasets outlined above (Phillips et al. 2006). We selected SDM environmental layers based on their likely importance to P. breviceps habitat suitability. All environmental layers were resampled to 1 × 1 km resolution prior to being included in models. A set of 10 000 background points were included within the SDM to compare densities in environmental values occupied by P. breviceps with those of the surrounding unoccupied environment. We addressed sample bias within the study area with a ‘target group’ background sampling approach (Phillips et al. 2009) (see Fig. S1). We defined the target group as arboreal mammal species occurring within the study area, including P. breviceps. Sampling intensity for target group species was mapped by converting species presence records of the target group to a kernel density map using the kde2d function of the ‘MASS’ package (Venables and Ripley 2002) set with the default kernel bandwidth. Model performance was measured as area under the curve of the receiver operating characteristic plot, and the contribution of environmental variables to the response variable was measured as permutation importance (Phillips 2005).

Fire overlap

We overlapped the former and reclassified P. breviceps EOO with 2019–20 bushfire severity maps from the Google Earth Engine Burnt Area Mapping (GEEBAM; Department of Industry Planning & Environment (DIPE) 2020). GEEBAM classifies the cells within the fire boundary as one of five fire severity classes: no data (cleared land, water etc.); unburnt (unburnt and lightly burnt); low and moderately burnt (some or moderate change post-fire); high severity (vegetation mostly scorched); and very high severity (vegetation clearly consumed). When calculating fire overlap, we considered only fires occurring within the ‘preliminary area for environmental analysis’ (following Legge et al. 2020). This area encompasses bioregions that were deemed to have experienced anomalously substantial fire activity during the 2019–20 bushfire season. Overlap measures were calculated using QGIS ver. 3.14.1 (QGIS Development Team 2021).

We created a fire severity × habitat quality matrix to help identify the spatial intersection between fire severity and habitat quality for the reclassified P. breviceps. First, we classified the continuous output of relative habitat quality derived from the SDM into four discrete classes: low quality (relative likelihood of occurrence 0–0.25); low–medium quality (relative likelihood of occurrence 0.25–0.50); medium–high quality (relative likelihood of occurrence 0.5–0.75); and high quality (relative likelihood of occurrence 0.75–1). We then combined the reclassified SDM with the GEEBAM fire severity layer to derive a layer with 16 unique combinations of all combinations of habitat quality and fire severity and mapped this across the range of P. breviceps.


Results

Based on the proposed distribution for the reclassified P. breviceps Cremona et al. (2021), the range of the former P. breviceps is 12 times larger than the reclassified species range based on EOO (1 276 383 km2 cf. 105 723 km2; Figs 1 and 2). The 2019–20 fire overlapped with 8.1% of the former P. breviceps EOO (103 931 km2) compared to 32.7% of the reclassified P. breviceps EOO (34 529 km2; Figs 13). Fire severity maps showed that 13.3% of the reclassified P. breviceps EOO burned at either high (9.6%) or very high (3.7%) severity, compared to only 3.3% of the former EOO falling within those two categories (high = 2.3%; very high = 1%; Fig. 3). Intersecting habitat quality and fire severity showed areas of high-quality habitat were affected by high severity fires, particularly areas in the NSW south coast (Dampier and Bodalla State Forests; Fig. 4c). High quality unburned refuges within the fire boundary occur on the mid-north coast of NSW, in areas such as Washpool and Cottan-Bimbang National Parks (Fig. 4a).


Fig. 2.  Spatial distribution of (a) the 2019–20 megafires classified into fire severity classes, and two measures of the geographic range of the reclassified sugar glider Petaurus breviceps (NIAFED, National Indicative Aggregated Fire Extent Dataset); (b) suitable habitat derived from a Maxent model; and (c) extent of occurrence (EOO). In pane (c), range estimate is blue and the 2019–20 fire boundaries are red. The dashed line represents the species’ range as described in Cremona et al. (2021).
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Fig. 3.  Proportion of the former (light red) and reclassified (light blue) geographic range of the sugar glider Petaurus breviceps (Waterhouse, 1838) as described by Cremona et al. (2021) that burnt in the 2019–20 Australian megafires as informed by the Google Earth Engine Burnt Area Map (Department of Industry Planning & Environment (DIPE) 2020).
Click to zoom


Fig. 4.  Comparison between relative likelihood of occurrence of the reclassified sugar glider Petaurus breviceps based on a species distribution model and fire severity mapping of the 2019–20 Australian megafires as informed by the Google Earth Engine Burnt Area Map (Department of Industry Planning & Environment (DIPE) 2020). (a) Washpool National Park was unburnt or experienced predominantly low severity fires in high-quality sugar glider habitat; (b) Yengo and Wollemi National Parks experienced predominantly low to moderate fires in low-quality habitat; and (c) Dampier and Bodalla State Forests experienced predominantly high and very high severity fires in high-quality habitat.
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Discussion

This study highlights the significant contribution that taxonomic revision can make to conservation. In this case, the taxonomic revision affected a common and long-recognised species in an ostensibly well-known group of animals (i.e. mammals). This revision resulted in a large reduction in the geographic distribution of one of the three reclassified constituent species, and a substantial increase in the proportion of its habitat impacted by Australia’s 2019–20 megafires. Based on available evidence for the species’ extent, approximately a third of the distribution of the reclassified P. breviceps was impacted by fire, with ∼13% severely burned, including high-quality habitat. There is no doubt that the insufficient taxonomic resolution that plagues most other animal classes has led to equally dramatic, yet undetected, impacts on currently undescribed species (Saunders et al. 2021). Thus, the full impacts of the 2019–20 megafires on Australia’s biodiversity are unlikely to be apparent until more species are identified and described, and species complexes resolved (Catullo et al. 2021).

This study underscores the ongoing and considerable potential for substantial impacts to and extinctions of undescribed species (‘dark extinctions’; Boehm and Cronk 2021) in an age of increasingly large-scale disturbances. The 2019–20 Australian megafires burned ∼10.4 million hectares, an area nearly the size of England (Wintle et al. 2020). These fires were not only unprecedented in their scale, but also in their severity – some 1.8 million hectares of land burnt at high severity. Recent megafires in California and the Amazon (Escobar 2019; Barlow et al. 2020) were also unprecedented in scale (although smaller than the Australian fires) and captured the world’s attention. The footprint of mega-disturbances across broad areas encompassed an unknown number of undescribed species that may well become examples of dark extinctions. Boehm and Cronk (2021) suggest one way of avoiding ‘dark extinctions’ is to prioritise taxonomic efforts in areas of high endemism, especially areas of high endemism that are subject to disturbance. Eastern Australia is recognised as an ecoregion of high vertebrate endemism (Lamoreux et al. 2006). Appropriately recognising threats and avoiding unknown extinctions of undescribed species in the age of megafire will require a significant investment in taxonomy, a field that is under-appreciated and under-resourced (Wheeler 2004). While species are typically thought of as the base units of biodiversity, where taxonomic resolution is potentially unresolved, an alternative approach may be to use genetic data to conserve lineage diversity (Rosauer et al. 2016; Coates et al. 2018), rather than relying solely on conserving described species diversity.

Unfortunately, there is currently very little known about the effects of high severity wildfire on populations of sugar gliders through their reclassified range and, although less than ideal, we are mostly reliant on information on the effects of high severity fire on a closely related species (i.e. Krefft’s glider) in a different ecosystem (i.e. mountane ash forest). A previous study of responses to high severity fire found that Krefft’s gliders (P. notatus; formerly subsumed in P. breviceps) were observed 3 years post-fire at just 3% of sites burned in the 2009 Black Saturday bushfires compared to 17% of sites in unburned mountain ash forests (Lindenmayer et al. 2013). Encouragingly, sugar glider site occupancy in unburnt coastal eucalypt forests appears to be considerably higher than that of Kreftt’s gliders in mountain ash forests. Occupancies of sugar gliders at 40–100% of survey sites have been observed through their reclassified range (Kavanagh et al. 1995; Wintle et al. 2005; Goldingay et al. 2015; Goldingay 2021), potentially increasing the likelihood and pace of recovery and recolonisation of severely fire-affected sites. Although a study of sugar gliders in their reclassified range found no influence of fire on P. breviceps 5-year post-fire (Kavanagh et al. 1995), fire severity was not characterised in this study, and it is unclear whether the same response would be observed following fires of high severity.

In some Australian forests, arboreal mammals are highly vulnerable to the effects of severe fire, particularly obligate hollow-users (Lindenmayer et al. 2021). While fire can play an important role in accelerating the formation of tree hollows (Adkins 2006), it can also have a significant effect on the death, collapse and consequent loss of large hollow-bearing trees. Following the 2009 Black Saturday fires in montane ash forests of Victoria, 79% of large hollow-bearing trees died and 57–100% of dead trees or stags were consumed by the fires (Lindenmayer et al. 2012). Given that hollow formation in some eucalypts can take over a century (Gibbons and Lindenmayer 2002), the removal of such trees from the landscape can have long-lasting impacts on arboreal fauna. However, the impacts of fire on hollow-bearing trees in the eucalypt forests of south-eastern Australia are somewhat context- and species-dependent. Whilst fire has consistently been found to reduce dead hollow-bearing tree abundance (Eyre 2005; Eyre et al. 2010), more frequent fires (McLean et al. 2015) and fires of higher severity (Salmona et al. 2018) can result in more hollows, more frequent fires can result in fewer hollows (Salmona et al. 2018), and less time since fire can result in fewer hollow-bearing trees (Eyre et al. 2010; Haslem et al. 2012). Encouragingly, at least in some fire-affected regions, sugar gliders may not be as strongly dependent on hollow abundance as other sympatric gliders, such as threatened yellow-bellied gliders (Goldingay 2021). Fire may also affect some food resources for sugar gliders, which feed on plant exudates (e.g. honeydew and nectar) and a range of invertebrates (Smith 1982). Insect abundance also likely declined following the 2019–20 fires, at least temporarily (Swengel 2001; Legge et al. 2021). In the context of the 2019–20 bushfires, areas burned at high and very high severity may result in reduced abundance and occupancy of sugar gliders. Over what timespan these potential impacts are felt remains unclear and likely depends on the pace of post-fire vegetation succession, recovery rates and the temporal patterning of future fires. Clearly, studies investigating the impacts of high severity fire (and regimes including such fires) on populations of sugar gliders through their reclassified range are needed to assess the realised impact of such fires on this species.

In addition to highlighting the potential impacts of the 2019–20 bushfires on sugar gliders, while it will require validating in the field, we have outlined an approach to mapping the intersection of habitat quality and fire severity. Early analyses of the potential 2019–20 post-fire impacts on species measured the overlap between a species range and the fire boundary (Ward et al. 2020), but acknowledged that a more nuanced approach would improve assessment of impacts across a species’ range. Here, we outlined one approach for defining a habitat quality × fire severity matrix, which facilitates a rapid assessment of the proportion of areas that differ in their habitat suitability that were burned at varying severities. Mapping this matrix helps to identify key areas of interest to conservation practitioners: key areas could be prioritised for protection (unburned refuges) or urgent interventions (severely burned, high-quality habitats), as well as helping to identify areas that are relatively low priorities, such as low-quality habitats burned at low severity. Such an approach could be used for other species within fire-affected areas. While this approach has broad utility for mapping priority areas for species across large areas, due to constraints in data resolution, it also has the potential to overlook environmental features which are important at the microhabitat scale. In acknowledging the potential importance of these features to species conservation, we suggest the current approach could be optimised with the inclusion of microhabitat data, such that species habitat quality can be assessed in more detail.

Our assessment of the revised taxonomic and geographic boundaries of P. breviceps suggest a potential for large-scale and long-term impacts of the 2019–20 megafire on this recently reclassified species. However, it is worth noting that very little work assessing the impacts of severe wildfires on sugar gliders has been conducted within their reclassified distribution. As a result, we have noted how severe wildfires have impacted a closely related species (P. notatus) in a different system (i.e. mountain ash; Lindenmayer et al. 2013). Future studies investigating the impacts of severe wildfire on sugar gliders are sorely needed if we are to better understand the threat they pose to this newly reclassified species. The 2019–20 fires provide an opportunity to fill this critical knowledge gap.

In addition, where taxonomy lags behind our understanding of the genetic structure of populations, we suggest future studies could benefit from assessing the impact of major disturbances on genetic lineages (see Rosauer et al. 2016; Coates et al. 2018; Catullo et al. 2021), striving to conserve population and lineage diversity, rather than solely focusing on the impacts to described species.

By comparing the range of the reclassified species with fire severity maps, we have demonstrated that this species was potentially considerably more impacted by the megafires than previous taxonomy indicated. This trend is likely true for other groups suffering from poor taxanomic resolution. Our study provides an instructive example of the substantial risk of under-estimating impacts of mega-disturbance on undescribed or poorly resolved species, and hence the urgent need for cataloguing Earth’s biodiversity in the age of megafire.


Supplementary material

Supplementary material is available online.


Data availability

Data extracted from published sources used in the preparation of this manuscript, along with R code used in analyses, are available in Dryad at https://doi.org/10.5061/dryad.wm37pvmnb.


Conflicts of interest

The authors declare no conflicts of interest.


Declaration of funding

This project was supported indirectly by the Australian Government’s National Environmental Science Program (Threatened Species Recovery Hub).


Author contribution

C.J.J. conceived the study and led the writing; H.A.M. and D.G.N. conceived the study, and led the analysis and data visualisation. All authors contributed to the preparation and revision of this manuscript, gave final approval for publication and agree to be accountable for the content.



Acknowledgements

We thank all the taxonomists working to resolve cryptic species globally. It is an often thankless task with little recognition – we recognise its fundamental importance to species conservation. Specifically, we thank A. Baker, S. J. B. Cooper, R. Montague–Drake, A. M. Stobo–Wilson and S. M. Carthew for revising the sugar glider complex. We thank Atlas of Living Australia and Google Earth Engine Burnt Area Mapping for providing open access data repositories. We thank Alana de Laive for the illustration. We thank one anomoymous reviewer and Dr. Ross Goldingay for their reviews which greatly improved the manuscript.


References

Adkins, MF (2006). A burning issue: using fire to accelerate tree hollow formation in Eucalyptus species. Australian Forestry 69, 107–113.
A burning issue: using fire to accelerate tree hollow formation in Eucalyptus species.Crossref | GoogleScholarGoogle Scholar |

Barlow, J, Berenguer, E, Carmenta, R, and França, F (2020). Clarifying Amazonia’s burning crisis. Global Change Biology 26, 319–321.
Clarifying Amazonia’s burning crisis.Crossref | GoogleScholarGoogle Scholar | 31729092PubMed |

Barnett, JM, and Buzzetti, DRC (2014). A new species of Cichlocolaptes Reichenbach 1853 (Furnariidae), the ‘gritador-do-nordeste’, an undescribed trace of the fading bird life of northeastern Brazil. Revista Brasileira de Ornitologia 22, 75–94.
A new species of Cichlocolaptes Reichenbach 1853 (Furnariidae), the ‘gritador-do-nordeste’, an undescribed trace of the fading bird life of northeastern Brazil.Crossref | GoogleScholarGoogle Scholar |

Beheregaray, LB, Pfeiffer, LV, Attard, CRM, Sandoval-Castillo, J, Domingos, FMCB, Faulks, LK, Gilligan, DM, and Unmack, PJ (2017). Genome-wide data delimits multiple climate-determined species ranges in a widespread Australian fish, the golden perch (Macquaria ambigua). Molecular Phylogenetics and Evolution 111, 65–75.
Genome-wide data delimits multiple climate-determined species ranges in a widespread Australian fish, the golden perch (Macquaria ambigua).Crossref | GoogleScholarGoogle Scholar | 28347889PubMed |

Bickford, D, Lohman, DJ, Sodhi, NS, Ng, PKL, Meier, R, Winker, K, Ingram, KK, and Das, I (2007). Cryptic species as a window on diversity and conservation. Trends in Ecology & Evolution 22, 148–155.
Cryptic species as a window on diversity and conservation.Crossref | GoogleScholarGoogle Scholar |

Boehm, MMA, and Cronk, QCB (2021). Dark extinction: the problem of unknown historical extinctions. Biology Letters 17, 20210007.
Dark extinction: the problem of unknown historical extinctions.Crossref | GoogleScholarGoogle Scholar | 33653097PubMed |

Campbell, CD, Sarre, SD, Stojanovic, D, Gruber, B, Medlock, K, Harris, S, MacDonald, AJ, and Holleley, CE (2018). When is a native species invasive? Incursion of a novel predatory marsupial detected using molecular and historical data. Diversity and Distributions 24, 831–840.
When is a native species invasive? Incursion of a novel predatory marsupial detected using molecular and historical data.Crossref | GoogleScholarGoogle Scholar |

Catullo, RA, Schembri, R, Tedeschi, LG, Eldridge, MDB, Joseph, L, and Moritz, CC (2021). Benchmarking taxonomic and genetic diversity after the fact: lessons learned from the catastrophic 2019–2020 Australian bushfires. Frontiers in Ecology and Evolution 9, 645820.
Benchmarking taxonomic and genetic diversity after the fact: lessons learned from the catastrophic 2019–2020 Australian bushfires.Crossref | GoogleScholarGoogle Scholar |

Coates, DJ, Byrne, M, and Moritz, C (2018). Genetic diversity and conservation units: dealing with the species-population continuum in the age of genomics. Frontiers in Ecology and Evolution 6, 165.
Genetic diversity and conservation units: dealing with the species-population continuum in the age of genomics.Crossref | GoogleScholarGoogle Scholar |

Cremona, T, Baker, AM, Cooper, SJB, Montague-Drake, R, Stobo-Wilson, AM, and Carthew, SM (2021). Integrative taxonomic investigation of Petaurus breviceps (Marsupialia: Petauridae) reveals three distinct species. Zoological Journal of the Linnean Society 191, 503–527.
Integrative taxonomic investigation of Petaurus breviceps (Marsupialia: Petauridae) reveals three distinct species.Crossref | GoogleScholarGoogle Scholar |

Department of Industry Planning & Environment (DIPE) (2020) The Google Earth Engine BurntArea Map (GEEBAM) v2p1.’ (State Government of NSW and Department of Planning, Industry & Environment). Available at https://datasets.seed.nsw.gov.au/dataset/google-earth-engine-burnt-area-map-geebam

Eldridge, MDB, Meek, PD, and Johnson, RN (2014). Taxonomic uncertainty and the loss of biodiversity on Christmas Island, Indian Ocean: taxonomic uncertainty and extinction. Conservation Biology 28, 572–579.
Taxonomic uncertainty and the loss of biodiversity on Christmas Island, Indian Ocean: taxonomic uncertainty and extinction.Crossref | GoogleScholarGoogle Scholar |

Escobar, H (2019). Amazon fires clearly linked to deforestation, scientists say. Science 365, 853–853.
Amazon fires clearly linked to deforestation, scientists say.Crossref | GoogleScholarGoogle Scholar | 31467204PubMed |

Eyre, TJ (2005). Hollow-bearing trees in large glider habitat in south-east Queensland, Australia: abundance, spatial distribution and management. Pacific Conservation Biology 11, 23–37.
Hollow-bearing trees in large glider habitat in south-east Queensland, Australia: abundance, spatial distribution and management.Crossref | GoogleScholarGoogle Scholar |

Eyre, TJ, Butler, DW, Kelly, AL, and Wang, J (2010). Effects of forest management on structural features important for biodiversity in mixed-age hardwood forests in Australia’s subtropics. Forest Ecology and Management 259, 534–546.
Effects of forest management on structural features important for biodiversity in mixed-age hardwood forests in Australia’s subtropics.Crossref | GoogleScholarGoogle Scholar |

Garnett, ST, and Christidis, L (2017). Taxonomy anarchy hampers conservation. Nature 546, 25–27.
Taxonomy anarchy hampers conservation.Crossref | GoogleScholarGoogle Scholar | 28569833PubMed |

Gibbons P, Lindenmayer DB (2002) ‘Tree Hollows and Wildlife Conservation in Australia.’ (CSIRO Publishing: Melbourne, Vic.)

Goldingay, RL (2021). General or local habitat preferences? Unravelling geographically consistent patterns of habitat preference in gliding mammals. Forest Ecology and Management 491, 119204.
General or local habitat preferences? Unravelling geographically consistent patterns of habitat preference in gliding mammals.Crossref | GoogleScholarGoogle Scholar |

Goldingay, RL, Rueegger, NN, Grimson, MJ, and Taylor, BD (2015). Specific nest box designs can improve habitat restoration for cavity-dependent arboreal mammals: nest box designs favored by arboreal mammals. Restoration Ecology 23, 482–490.
Specific nest box designs can improve habitat restoration for cavity-dependent arboreal mammals: nest box designs favored by arboreal mammals.Crossref | GoogleScholarGoogle Scholar |

Haslem, A, Avitabile, SC, Taylor, RS, Kelly, LT, Watson, SJ, Nimmo, DG, Kenny, SA, Callister, KE, Spence-Bailey, LM, Bennett, AF, and Clarke, MF (2012). Time-since-fire and inter-fire interval influence hollow availability for fauna in a fire-prone system. Biological Conservation 152, 212–221.
Time-since-fire and inter-fire interval influence hollow availability for fauna in a fire-prone system.Crossref | GoogleScholarGoogle Scholar |

IUCN (2021) ‘The IUCN Red List of Threatened Species, version 2021-2.’ (International Union for Conservation of Nature)

Kavanagh, RP, Debus, S, Tweedie, T, and Webster, R (1995). Distribution of nocturnal forest birds and mammals in north-eastern New South Wales: relationships with environmental variables and management history. Wildlife Research 22, 359–377.
Distribution of nocturnal forest birds and mammals in north-eastern New South Wales: relationships with environmental variables and management history.Crossref | GoogleScholarGoogle Scholar |

Lamoreux, JF, Morrison, JC, Ricketts, TH, Olson, DM, Dinerstein, E, McKnight, MW, and Shugart, HH (2006). Global tests of biodiversity concordance and the importance of endemism. Nature 440, 212–214.
Global tests of biodiversity concordance and the importance of endemism.Crossref | GoogleScholarGoogle Scholar | 16382239PubMed |

Lees, AC, and Pimm, SL (2015). Species, extinct before we know them? Current Biology 25, R177–R180.
Species, extinct before we know them?Crossref | GoogleScholarGoogle Scholar | 25734261PubMed |

Legge SM, Woinarski JCZ, Garnett ST, Nimmo DG, Scheele BC, Lintermans M, Mitchell N, Ferris J (2020) Rapid analysis of impacts of the 2019-20 fires on animal species, and prioritisation of species for management response. (Department of Agriculture, Water and the Environment)

Legge, S, Woinarski, JCZ, Scheele, BC, Garnett, ST, Lintermans, M, Nimmo, DG, Whiterod, NS, Southwell, DM, Ehmke, G, Buchan, A, Gray, J, Metcalfe, DJ, Page, M, Rumpff, L, Leeuwen, S, Williams, D, Ahyong, ST, Chapple, DG, Cowan, M, Hossain, MA, Kennard, M, Macdonald, S, Moore, H, Marsh, J, McCormack, RB, Michael, D, Mitchell, N, Newell, D, Raadik, TA, and Tingley, R (2021). Rapid assessment of the biodiversity impacts of the 2019–2020 Australian megafires to guide urgent management intervention and recovery and lessons for other regions. Diversity and Distributions , .
Rapid assessment of the biodiversity impacts of the 2019–2020 Australian megafires to guide urgent management intervention and recovery and lessons for other regions.Crossref | GoogleScholarGoogle Scholar |

Lindenmayer, DB, Blanchard, W, Blair, D, McBurney, L, Taylor, C, Scheele, BC, Westgate, MJ, Robinson, N, and Foster, C (2021). The response of arboreal marsupials to long-term changes in forest disturbance. Animal Conservation 24, 246–258.
The response of arboreal marsupials to long-term changes in forest disturbance.Crossref | GoogleScholarGoogle Scholar |

Lindenmayer, DB, Blanchard, W, McBurney, L, Blair, D, Banks, S, Likens, GE, Franklin, JF, Laurance, WF, Stein, JAR, and Gibbons, P (2012). Interacting factors driving a major loss of large trees with cavities in a forest ecosystem. PLoS ONE 7, e41864.
Interacting factors driving a major loss of large trees with cavities in a forest ecosystem.Crossref | GoogleScholarGoogle Scholar | 23071486PubMed |

Lindenmayer, DB, Blanchard, W, McBurney, L, Blair, D, Banks, SC, Driscoll, D, Smith, AL, and Gill, AM (2013). Fire severity and landscape context effects on arboreal marsupials. Biological Conservation 167, 137–148.
Fire severity and landscape context effects on arboreal marsupials.Crossref | GoogleScholarGoogle Scholar |

Mace, GM (2004). The role of taxonomy in species conservation. Philosophical Transactions of the Royal Society of London. Series B: Biological Sciences 359, 711–719.
The role of taxonomy in species conservation.Crossref | GoogleScholarGoogle Scholar | 15253356PubMed |

McLean, CM, Bradstock, R, Price, O, and Kavanagh, RP (2015). Tree hollows and forest stand structure in Australian warm temperate Eucalyptus forests are adversely affected by logging more than wildfire. Forest Ecology and Management 341, 37–44.
Tree hollows and forest stand structure in Australian warm temperate Eucalyptus forests are adversely affected by logging more than wildfire.Crossref | GoogleScholarGoogle Scholar |

Nolan, RH, Boer, MM, Collins, L, Resco de Dios, V, Clarke, H, Jenkins, M, Kenny, B, and Bradstock, RA (2020). Causes and consequences of eastern Australia’s 2019–20 season of mega-fires. Global Change Biology 26, 1039–1041.
Causes and consequences of eastern Australia’s 2019–20 season of mega-fires.Crossref | GoogleScholarGoogle Scholar | 31916352PubMed |

Phillips, SJ (2005). A brief tutorial on Maxent. AT&T Research 190, 231–259.

Phillips, SJ, Anderson, RP, and Schapire, RE (2006). Maximum entropy modeling of species geographic distributions. Ecological Modelling 190, 231–259.
Maximum entropy modeling of species geographic distributions.Crossref | GoogleScholarGoogle Scholar |

Phillips, SJ, Dudík, M, Elith, J, Graham, CH, Lehmann, A, Leathwick, J, and Ferrier, S (2009). Sample selection bias and presence-only distribution models: implications for background and pseudo-absence data. Ecological Applications 19, 181–197.
Sample selection bias and presence-only distribution models: implications for background and pseudo-absence data.Crossref | GoogleScholarGoogle Scholar | 19323182PubMed |

QGIS Development Team (2021) QGIS geographic information system. (Open Source Geospatial Foundation) Available at http://qgis.org

R Core Team (2021) ‘R: a language and environment for statistical computing.’ (R Foundation for Statistical Computing: Vienna)

Régnier, C, Achaz, G, Lambert, A, Cowie, RH, Bouchet, P, and Fontaine, B (2015). Mass extinction in poorly known taxa. Proceedings of the National Academy of Sciences of the United States of America 112, 7761–7766.
Mass extinction in poorly known taxa.Crossref | GoogleScholarGoogle Scholar | 26056308PubMed |

Rosauer, DF, Blom, MPK, Bourke, G, Catalano, S, Donnellan, S, Gillespie, G, Mulder, E, Oliver, PM, Potter, S, Pratt, RC, Rabosky, DL, Skipwith, PL, and Moritz, C (2016). Phylogeography, hotspots and conservation priorities: an example from the Top End of Australia. Biological Conservation 204, 83–93.
Phylogeography, hotspots and conservation priorities: an example from the Top End of Australia.Crossref | GoogleScholarGoogle Scholar |

Salmona, J, Dixon, KM, and Banks, SC (2018). The effects of fire history on hollow-bearing tree abundance in montane and subalpine eucalypt forests in southeastern Australia. Forest Ecology and Management 428, 93–103.
The effects of fire history on hollow-bearing tree abundance in montane and subalpine eucalypt forests in southeastern Australia.Crossref | GoogleScholarGoogle Scholar |

Saunders, ME, Barton, PS, Bickerstaff, JRM, Frost, L, Latty, T, Lessard, BD, Lowe, EC, Rodriguez, J, White, TE, and Umbers, KDL (2021). Limited understanding of bushfire impacts on Australian invertebrates. Insect Conservation and Diversity 14, 285–293.
Limited understanding of bushfire impacts on Australian invertebrates.Crossref | GoogleScholarGoogle Scholar |

Smith, AP (1982). Diet and feeding strategies of the marsupial sugar glider in temperate Australia. The Journal of Animal Ecology 51, 149.
Diet and feeding strategies of the marsupial sugar glider in temperate Australia.Crossref | GoogleScholarGoogle Scholar |

Swengel, AB (2001). A literature review of insect responses to fire, compared to other conservation managements of open habitat. Biodiversity and Conservation 10, 1141–1169.
A literature review of insect responses to fire, compared to other conservation managements of open habitat.Crossref | GoogleScholarGoogle Scholar |

Venables WN, Ripley BD (2002) ‘MASS library of functions. Modern applied statistics with S.’ (Springer)

Ward, M, Tulloch, AIT, Radford, JQ, Williams, BA, Reside, AE, Macdonald, SL, Mayfield, HJ, Maron, M, Possingham, HP, Vine, SJ, O’Connor, JL, Massingham, EJ, Greenville, AC, Woinarski, JCZ, Garnett, ST, Lintermans, M, Scheele, BC, Carwardine, J, Nimmo, DG, Lindenmayer, DB, Kooyman, RM, Simmonds, JS, Sonter, LJ, and Watson, JEM (2020). Impact of 2019–2020 mega-fires on Australian fauna habitat. Nature Ecology & Evolution 4, 1321–1326.
Impact of 2019–2020 mega-fires on Australian fauna habitat.Crossref | GoogleScholarGoogle Scholar |

Wheeler, QD (2004). Taxonomic triage and the poverty of phylogeny. Philosophical Transactions of the Royal Society of London. Series B: Biological Sciences 359, 571–583.
Taxonomic triage and the poverty of phylogeny.Crossref | GoogleScholarGoogle Scholar | 15253345PubMed |

Wintle, BA, Kavanagh, RP, McCarthy, MA, and Burgman, MA (2005). Estimating and dealing with detectability in occupancy surveys for forest owls and arboreal marsupials. Journal of Wildlife Management 69, 905–917.
Estimating and dealing with detectability in occupancy surveys for forest owls and arboreal marsupials.Crossref | GoogleScholarGoogle Scholar |

Wintle, BA, Legge, S, and Woinarski, JCZ (2020). After the megafires: what next for Australian wildlife? Trends in Ecology & Evolution 35, 753–757.
After the megafires: what next for Australian wildlife?Crossref | GoogleScholarGoogle Scholar |