SpaTra: Spatial Transcriptomics Projects @ Prasath Lab
Abstract:
The advent of deep learning (DL) and multimodal spatial transcriptomics (ST) has revolutionized cancer research, offering unprecedented insights into tumor biology. We explore the integration of DL with ST to advance cancer diagnostics, treatment planning, and precision medicine. DL, a subset of artificial intelligence, employs neural networks to model complex patterns in vast datasets, significantly enhancing diagnostic and treatment applications. In oncology, convolutional neural networks excel in image classification, segmentation, and tumor volume analysis, essential for identifying tumors and optimizing radiotherapy. Our projects delve into multimodal data analysis, which integrates genomic, proteomic, imaging, and clinical data to offer a holistic understanding of cancer biology. Leveraging diverse data sources, researchers can uncover intricate details of tumor heterogeneity, microenvironment interactions, and treatment responses. Examples include integrating MRI data with genomic profiles for accurate glioma grading and combining proteomic and clinical data to uncover drug resistance mechanisms. DL’s integration with multimodal data enables comprehensive and actionable insights for cancer diagnosis and treatment. The synergy between DL models and multimodal data analysis enhances diagnostic accuracy, personalized treatment planning, and prognostic modeling. Notable applications include ST, which maps gene expression patterns within tissue contexts, providing critical insights into tumor heterogeneity and potential therapeutic targets. Integration of DL and multimodal ST represents a paradigm shift towards more precise and personalized oncology. Our work will leverage these methodologies and apply advanced computational technologies to transform cancer research and clinical practice.
Different deep learning models for analyzing spatial transcriptomics data [1]
References:
[1] P. Rajdeo, B. Aronow, V. B. S. Prasath. Deep learning-based multimodal spatial transcriptomics analysis for cancer. Advances in Cancer Research, vol 163, July 2024. doi:10.1016/bs.acr.2024.08.001.
[2] P. Rajdeo, B. Aronow, V. B. S. Prasath. TBA, 2024. Submitted.