Litcius/Paper detail

Pathogenomics for accurate diagnosis, treatment, prognosis of oncology: a cutting edge overview

Xiaobing Feng, Wen Shu, M. Li, Junyu Li, Junyao Xu, Min He

2024Journal of Translational Medicine18 citationsDOIOpen Access PDF

Abstract

The capability to gather heterogeneous data, alongside the increasing power of artificial intelligence to examine it, leading a revolution in harnessing multimodal data in the life sciences. However, most approaches are limited to unimodal data, leaving integrated approaches across modalities relatively underdeveloped in computational pathology. Pathogenomics, as an invasive method to integrate advanced molecular diagnostics from genomic data, morphological information from histopathological imaging, and codified clinical data enable the discovery of new multimodal cancer biomarkers to propel the field of precision oncology in the coming decade. In this perspective, we offer our opinions on synthesizing complementary modalities of data with emerging multimodal artificial intelligence methods in pathogenomics. It includes correlation between the pathological and genomic profile of cancer, fusion of histology, and genomics profile of cancer. We also present challenges, opportunities, and avenues for future work.

Topics & Concepts

ModalitiesComputer sciencePrecision medicineBig dataGenomicsMedical physicsArtificial intelligenceDECIPHERCancerData scienceMedicineBioinformaticsPathologyData miningInternal medicineBiologyGenomeSociologyBiochemistrySocial scienceGeneAI in cancer detectionRadiomics and Machine Learning in Medical ImagingCancer Genomics and Diagnostics