A Personalized Oncology Mobile Application Integrating Clinical and Genomic Features to Predict the Risk Stratification of Lung Cancer Patients via Machine Learning
Abstract:Predicting lung adenocarcinoma (LUAD) and Lung Squamous Cell Carcinoma (LUSC) risk status is a crucial step in precision oncology. In current clinical practice, clinicians, and patients are informed about the patient's risk group only with cancer staging. Several machine learning approaches for stratifying LUAD and LUSC patients have recently been described, however, there has yet to be a study that compares the integrated modeling of clinical and genetic data from these two lung cancer types. In our work, we… Show more
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