Deep Learning Approaches for Cardiovascular Risk Prediction Incorporating Peripheral Arterial Disease Score in Cancer Survivors
DOI:
https://doi.org/10.64149/J.Carcinog.24.2s.905-918Keywords:
Cardiovascular Disease, Cancer Survivors, Peripheral Arterial Disease, Deep Learning, PAD Score, NHANES, Risk Prediction, Neural Networks, Chi-square Test, TabTransformerAbstract
Cancer survivors face elevated risks of cardiovascular disease (CVD), often exacerbated by underdiagnosed peripheral arterial disease (PAD). This study presents a deep learning–based framework for cardiovascular risk prediction among cancer survivors, incorporating a composite five-factor PAD score derived from the NHANES 2021–2023 dataset. After cohort selection and feature engineering, eleven distinct machine learning and deep learning models were implemented, including feedforward, LSTM, CNN-LSTM, Wide & Deep, and Tab Transformer architectures. Extensive preprocessing, chi-square association testing, and ROC AUC evaluation ensured methodological robustness. While traditional models showed limitations in recall and F1-score, attention-based and convolutional architectures demonstrated improved predictive capacity. The chi-square test confirmed a significant association between PAD scores and CVD comorbidities (χ² = 112.4, p < 0.0001). These findings highlight the potential of PAD-aware deep learning models for improved risk stratification in cardio-oncology care.




