Please use this identifier to cite or link to this item: http://repo.lib.jfn.ac.lk/ujrr/handle/123456789/10015
Title: Explainable Deep Learning Approach for Multi label Classification of Antimicrobial Resistance with Missing Labels
Authors: Mukunthan, T.
Brian, G.
Roberto La, R.
Anil, F.
Keywords: Multi label classification;Deep neural network;Multi-drug AMR;Missing labels;Explainable AI
Issue Date: 2022
Publisher: IEEE
Abstract: PredictingAntimicrobialResistance(AMR)fromgenomicsequencedatahasbecomea significantcomponentofovercomingtheAMRchallenge,especiallygivenitspotentialforfacilitatingmore rapiddiagnosticsandpersonalisedantibiotictreatments.Withtherecentadvancesinsequencingtechnologies andcomputingpower,deeplearningmodelsforgenomicsequencedatahavebeenwidelyadoptedtopredict AMRmorereliablyanderror-free.TherearemanydifferenttypesofAMR;therefore,anypracticalAMR predictionsystemmustbeabletoidentifymultipleAMRspresentinagenomicsequence.Unfortunately, mostgenomicsequencedatasetsdonothaveallthelabelsmarked,therebymakingadeeplearningmodelling approachchallengingowingtoitsrelianceonlabelsforreliabilityandaccuracy.Thispaperaddresses thisissuebypresentinganeffectivedeeplearningsolution,Mask-Loss1Dconvolutionneuralnetwork (ML-ConvNet),forAMRpredictionondatasetswithmanymissinglabels.Thecorecomponentof ML-ConvNetutilisesamaskedlossfunctionthatovercomestheeffectofmissinglabelsinpredicting AMR.TheproposedML-ConvNetisdemonstratedtooutperformstate-of-the-artmethodsintheliteratureby 10.5%,accordingtotheF1score.Theproposedmodel’sperformanceisevaluatedusingdifferentdegrees ofthemissinglabelandisfoundtooutperformtheconventionalapproachby76%intheF1scorewhen 86.68%oflabelsaremissing.Furthermore,theML-ConvNetwasestablishedwithanexplainableartificial intelligence(XAI)pipeline,therebymakingitideallysuitedforhospitalandhealthcaresettings,wheremodel interpretabilityisanessentialrequirement.
URI: http://repo.lib.jfn.ac.lk/ujrr/handle/123456789/10015
Appears in Collections:Electrical & Electronic Engineering



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