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Ensemble Learning for Higher Diagnostic Precision in Schizophrenia Using Peripheral Blood Gene Expression Profile

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dc.contributor.author Wagh, Vipul Vilas en_US
dc.contributor.author Kottat, Tanvi en_US
dc.contributor.author Agrawal, Suchita en_US
dc.contributor.author Purohit, Shruti en_US
dc.contributor.author Pachpor, Tejaswini Arun en_US
dc.contributor.author NARLIKAR, LEELAVATI en_US
dc.contributor.author Paralikar, Vasudeo en_US
dc.contributor.author Khare, Satyajeet Pramod en_US
dc.date.accessioned 2025-04-15T06:54:17Z
dc.date.available 2025-04-15T06:54:17Z
dc.date.issued 2025-05 en_US
dc.identifier.citation Neuropsychiatric Disease and Treatment, 20, 923-936. en_US
dc.identifier.issn 1178-2021 en_US
dc.identifier.uri https://doi.org/10.2147/NDT.S449135 en_US
dc.identifier.uri http://dr.iiserpune.ac.in:8080/xmlui/handle/123456789/9583
dc.description.abstract Introduction: Stigma contributes to a significant part of the burden of schizophrenia (SCZ), therefore reducing false positives from the diagnosis would be liberating for the individuals with SCZ and desirable for the clinicians. The stigmatization associated with schizophrenia advocates the need for high -precision diagnosis. In this study, we present an ensemble learning -based approach for highprecision diagnosis of SCZ using peripheral blood gene expression profiles. Methodology: The machine learning (ML) models, support vector machines (SVM), and prediction analysis for microarrays (PAM) were developed using differentially expressed genes (DEGs) as features. The SCZ samples were classified based on a voting ensemble classifier of SVM and PAM. Further, microarray-based learning was used to classify RNA sequencing (RNA-Seq) samples from our case -control study (Pune-SCZ) to assess cross -platform compatibility. Results: Ensemble learning using ML models resulted in a significantly higher precision of 80.41% (SD: 0.04) when compared to the individual models (SVM-radial: 71.69%, SD: 0.04 and PAM 77.20%, SD: 0.02). The RNA sequencing samples from our case -control study (Pune-SCZ) resulted in a moderate precision (59.92%, SD: 0.05). The feature genes used for model building were enriched for biological processes such as response to stress, regulation of the immune system, and metabolism of organic nitrogen compounds. The network analysis identified RBX1, CUL4B, DDB1, PRPF19 , and COPS4 as hub genes. Conclusion: In summary, this study developed robust models for higher diagnostic precision in psychiatric disorders. Future efforts will be directed towards multi-omic integration and developing "explainable" diagnostic models. en_US
dc.language.iso en en_US
dc.publisher Dove Medical Press Ltd . en_US
dc.subject Schizophrenia en_US
dc.subject Peripheral blood en_US
dc.subject Gene expression en_US
dc.subject Machine learning en_US
dc.subject Ensemble learning en_US
dc.subject 2024 en_US
dc.title Ensemble Learning for Higher Diagnostic Precision in Schizophrenia Using Peripheral Blood Gene Expression Profile en_US
dc.type Article en_US
dc.contributor.department Dept. of Data Science en_US
dc.identifier.sourcetitle Neuropsychiatric Disease and Treatment en_US
dc.publication.originofpublisher Foreign en_US


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