Litcius/Paper detail

Multimodal analysis methods in predictive biomedicine

Arber Qoku, Nikoletta Katsaouni, Nadine Flinner, Florian Buettner, Marcel H. Schulz

2023Computational and Structural Biotechnology Journal24 citationsDOIOpen Access PDF

Abstract

For medicine to fulfill its promise of personalized treatments based on a better understanding of disease biology, computational and statistical tools must exist to analyze the increasing amount of patient data that becomes available. A particular challenge is that several types of data are being measured to cope with the complexity of the underlying systems, enhance predictive modeling and enrich molecular understanding. Here we review a number of recent approaches that specialize in the analysis of multimodal data in the context of predictive biomedicine. We focus on methods that combine different OMIC measurements with image or genome variation data. Our overview shows the diversity of methods that address analysis challenges and reveals new avenues for novel developments.

Topics & Concepts

BiomedicineContext (archaeology)Computer scienceData sciencePersonalized medicineFocus (optics)Precision medicineMachine learningArtificial intelligenceBioinformaticsBiologyOpticsPhysicsGeneticsPaleontologyCancer Genomics and DiagnosticsGene expression and cancer classificationGenetic Associations and Epidemiology