Multimodal analysis and the oncology patient: Creating a hospital system for integrated diagnostics and discovery

Comput Struct Biotechnol J. 2023 Sep 15:21:4536-4539. doi: 10.1016/j.csbj.2023.09.014. eCollection 2023.

Abstract

We propose that an information technology and computational framework that would unify access to hospital digital information silos, and enable integration of this information using machine learning methods, would bring a new paradigm to patient management and research. This is the core principle of Integrated Diagnostics (ID): the amalgamation of multiple analytical modalities, with evolved information technology, applied to a defined patient cohort, and resulting in a synergistic effect in the clinical value of the individual diagnostic tools. This has the potential to transform the practice of personalized oncology at a time at which it is very much needed. In this article we present different models from the literature that contribute to the vision of ID and we provide published exemplars of ID tools. We briefly describe ongoing efforts within a universal healthcare system to create national clinical datasets. Following this, we argue the case to create "hospital units" to leverage this multi-modal analysis, data integration and holistic clinical decision-making. Finally, we describe the joint model created in our institutions.

Keywords: Artificial Intelligence; Computational Oncology; Digital Pathology; Health data; Integrated Diagnostics and Discovery; Multimodal Analysis; Radiomics.