QMLGFeb 11, 2025

Advancing Precision Oncology Through Modeling of Longitudinal and Multimodal Data

arXiv:2502.07836v36 citationsh-index: 13IEEE Rev Biomed Eng
Originality Synthesis-oriented
AI Analysis

This is an incremental review that surveys existing methods to improve precision oncology for cancer patients by integrating time-series and diverse data types.

The paper addresses the challenge of characterizing cancer's dynamic heterogeneity by reviewing methods for modeling longitudinal and multimodal data, highlighting their synergy in enabling timely detection and personalized treatment without presenting new experimental results or concrete numbers.

Cancer evolves continuously over time through a complex interplay of genetic, epigenetic, microenvironmental, and phenotypic changes. This dynamic behavior drives uncontrolled cell growth, metastasis, immune evasion, and therapy resistance, posing challenges for effective monitoring and treatment. However, today's data-driven research in oncology has primarily focused on cross-sectional analysis using data from a single modality, limiting the ability to fully characterize and interpret the disease's dynamic heterogeneity. Advances in multiscale data collection and computational methods now enable the discovery of longitudinal multimodal biomarkers for precision oncology. Longitudinal data reveal patterns of disease progression and treatment response that are not evident from single-timepoint data, enabling timely abnormality detection and dynamic treatment adaptation. Multimodal data integration offers complementary information from diverse sources for more precise risk assessment and targeting of cancer therapy. In this review, we survey methods of longitudinal and multimodal modeling, highlighting their synergy in providing multifaceted insights for personalized care tailored to the unique characteristics of a patient's cancer. We summarize the current challenges and future directions of longitudinal multimodal analysis in advancing precision oncology.

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