MULTI-OMICS INTEGRATION FOR ELUCIDATING COMPLEX DISEASE MECHANISMS: A MACHINE LEARNING PERSPECTIVE

Authors

  • Dr. Indu Purushothaman Author
  • Dr. Shanmuga Priya M Author
  • Dr. Vinod Kumar P Author
  • Shitij Goyal Author
  • Ms. Niyati V. Thakkar Author
  • Jaskirat Singh Author

DOI:

https://doi.org/10.4238/0bdhg386

Keywords:

Multi-omics integration, Complex disease mechanisms, Machine learning, Genomics, Transcriptomics, Proteomics, Biomarker discovery, Data integration.

Abstract

Complex diseases like cancer, neurodegenerative diseases, and metabolic syndromes develop on complex interactions involving biological processes through genomic, transcriptomic, proteomic, and metabolomic. Conventional single-omics techniques can tend to miss this complexity and result in incomplete mechanistic insight. Against this background, the multi-omics integration has come as a powerful tool to give an overarching picture of the disease biology, through integration of heterogeneous data at different levels of molecular biology. Nonetheless, multi-omics data are high dimensional, noisy, and heterogeneous, and they pose a big challenge in the analysis process, which requires sophisticated computational models. Machine learning algorithms, including classical algorithms like support-vector machines and random forests, deep learning, and network-based models, have shown great potential in revealing hidden patterns, finding biomarkers, and predicting the outcome of a disease. This review critically analyzes the existing multi-omics integration approaches, the importance of machine learning in enhancing classification and interpretability, and evaluation metrics including accuracy, F1-score, and ROC-AUC used to measure the performance of a model. The main insights are that integrative methods can greatly contribute to the knowledge of disease pathogenesis and allow to identify biomarkers more accurately compared to single-omics. In spite of these developments, there are issues of data standardization, model interpretability and clinical translation. To complete the gap between computational predictions and real-world biomedical applications, future studies should emphasize explainable AI, single-cell and spatial multi-omics, and scalable frameworks.

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Published

2026-04-05

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Section

Articles

How to Cite

MULTI-OMICS INTEGRATION FOR ELUCIDATING COMPLEX DISEASE MECHANISMS: A MACHINE LEARNING PERSPECTIVE. (2026). Genetics and Molecular Research. https://doi.org/10.4238/0bdhg386

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