Dubai Telegraph - Half of species not assessed for endangered list risk extinction: study

EUR -
AED 4.255061
AFN 72.437749
ALL 95.956849
AMD 435.731102
ANG 2.07404
AOA 1062.461825
ARS 1618.786656
AUD 1.662133
AWG 2.08553
AZN 1.970545
BAM 1.955931
BBD 2.327766
BDT 141.80951
BGN 1.980453
BHD 0.437424
BIF 3427.94468
BMD 1.158628
BND 1.478706
BOB 7.98657
BRL 6.063064
BSD 1.155782
BTN 108.01971
BWP 15.793127
BYN 3.441446
BYR 22709.102929
BZD 2.324466
CAD 1.593438
CDF 2633.560581
CHF 0.913196
CLF 0.026707
CLP 1054.548206
CNY 7.971937
CNH 7.985639
COP 4301.83403
CRC 539.038475
CUC 1.158628
CUP 30.703634
CVE 110.272871
CZK 24.468128
DJF 205.814691
DKK 7.471365
DOP 68.584895
DZD 153.320865
EGP 60.593618
ERN 17.379416
ETB 180.456481
FJD 2.57534
FKP 0.865553
GBP 0.863867
GEL 3.145661
GGP 0.865553
GHS 12.643902
GIP 0.865553
GMD 84.579549
GNF 10130.72311
GTQ 8.852632
GYD 241.797259
HKD 9.078056
HNL 30.591184
HRK 7.526678
HTG 151.380805
HUF 388.586376
IDR 19578.490882
ILS 3.611501
IMP 0.865553
INR 108.757196
IQD 1514.101539
IRR 1523653.357824
ISK 143.60027
JEP 0.865553
JMD 182.042994
JOD 0.821447
JPY 183.741555
KES 150.157288
KGS 101.321721
KHR 4631.330575
KMF 492.416852
KPW 1042.731501
KRW 1732.26501
KWD 0.355027
KYD 0.96316
KZT 557.059279
LAK 24842.773226
LBP 103502.98783
LKR 362.935906
LRD 211.505097
LSL 19.597599
LTL 3.421126
LVL 0.700842
LYD 7.398528
MAD 10.802871
MDL 20.214443
MGA 4810.343352
MKD 61.647804
MMK 2432.688258
MNT 4135.109099
MOP 9.325025
MRU 46.137293
MUR 53.877257
MVR 17.900528
MWK 2003.743023
MXN 20.667056
MYR 4.574842
MZN 74.048192
NAD 19.595823
NGN 1586.798282
NIO 42.533036
NOK 11.339952
NPR 172.831336
NZD 1.986317
OMR 0.445484
PAB 1.155782
PEN 4.02067
PGK 4.990356
PHP 69.461469
PKR 322.629729
PLN 4.261892
PYG 7552.539085
QAR 4.226402
RON 5.095063
RSD 117.386409
RUB 94.912791
RWF 1689.720609
SAR 4.349969
SBD 9.328943
SCR 16.834338
SDG 696.334962
SEK 10.854279
SGD 1.481311
SHP 0.869271
SLE 28.444146
SLL 24295.856107
SOS 660.547148
SRD 43.2591
STD 23981.254139
STN 24.501749
SVC 10.112635
SYP 128.581659
SZL 19.590398
THB 37.827456
TJS 11.043288
TMT 4.055197
TND 3.406043
TOP 2.789697
TRY 51.379574
TTD 7.845849
TWD 37.028347
TZS 3000.845232
UAH 50.747122
UGX 4363.311444
USD 1.158628
UYU 47.093361
UZS 14090.944974
VES 528.918591
VND 30528.681279
VUV 138.407611
WST 3.184922
XAF 656.003824
XAG 0.017067
XAU 0.000266
XCD 3.13125
XCG 2.082931
XDR 0.815858
XOF 656.003824
XPF 119.331742
YER 276.506125
ZAR 19.600916
ZMK 10429.037131
ZMW 22.392598
ZWL 373.077647
  • RBGPF

    -13.5000

    69

    -19.57%

  • CMSC

    0.2300

    22.88

    +1.01%

  • CMSD

    0.0816

    22.74

    +0.36%

  • BCE

    -0.0300

    25.76

    -0.12%

  • AZN

    0.4700

    184.07

    +0.26%

  • NGG

    0.0700

    82.06

    +0.09%

  • RIO

    2.6900

    85.84

    +3.13%

  • BP

    -1.2100

    43.57

    -2.78%

  • BTI

    0.5500

    57.92

    +0.95%

  • GSK

    0.1500

    51.99

    +0.29%

  • RELX

    0.4500

    33.81

    +1.33%

  • RYCEF

    0.6300

    15.97

    +3.94%

  • BCC

    3.5800

    71.88

    +4.98%

  • VOD

    0.1500

    14.48

    +1.04%

  • JRI

    -0.0900

    11.68

    -0.77%

Half of species not assessed for endangered list risk extinction: study
Half of species not assessed for endangered list risk extinction: study / Photo: Juni Kriswanto - AFP/File

Half of species not assessed for endangered list risk extinction: study

More than half of species whose endangered status cannot be assessed due to a lack of data are predicted to face the risk of extinction, according to a machine-learning analysis published Thursday.

Text size:

The International Union for the Conservation of Nature (IUCN) currently has nearly 150,000 entries on its Red List for threatened species, including some 41,000 species threatened with extinction.

These include 41 percent of amphibians, 38 percent of sharks and rays, 33 percent of reef building corals, 27 percent of mammals and 13 percent of birds.

But there are thousands of species that the IUCN has been unable to categorise as they are "data insufficient" and are not on the Red List even though they live in the same regions and face similar threats to those species that have so far been assessed.

Researchers from the Norwegian University of Science and Technology used a machine learning technique to predict the likelihood of 7,699 data deficient species being at risk of extinction.

They trained the algorithm on a list of more than 26,000 species that the IUCN has been able to categorise, incorporating data on the regions where species live and other factors known to influence biodiversity to determine whether it predicted their extinction risk status.

"These could include climatic conditions, land use conditions or land use changes, pesticide use, threats from invasive species or really a range of different stressors," lead author Jan Borgelt, from the university's Industrial Ecology Programme, told AFP.

After comparing the algorithm's results with the IUCN's lists, the team then applied it to predict the data deficient species' extinction risk.

Writing in the journal Communications Biology, they found that 4,336 species -- or 56 percent of those sampled -- were likely threatened with extinction, including 85 percent of amphibians and 61 percent of mammals.

This compares to the 28 percent of species assessed by the IUCN Red List.

"We see that across most land areas and coastal areas around the world that the average extinction risk would be higher if we included data deficient species," said Borgelt.

A global United Nations biodiversity assessment in 2019 warned that as many as a million species were threatened with extinction due to a number of factors including habitat loss, invasive species and climate change.

Borgelt said the analysis revealed some hotspots for data-deficient species risk, including Madagascar and southern India. He said he hoped the study could help the IUCN develop its strategy for underreported species, adding that the team had reached out to the union.

"With these predictions from machine learning we can get really sort of pre-assessments or we could use those as predictions to prioritise which species have to be looked at by the IUCN," he said.

Head of the IUCN's Red List Craig Hilton-Taylor said the organisation was continuously harnessing new technology with a view to reduce the number of data deficient species.

"We also understand that a proportion of data deficient species are at risk of extinction, and include this in our calculations when we estimate the proportion of threatened species in a group," he told AFP.

I.Uddin--DT