深度学习
医学
人工智能
神经内分泌肿瘤
无进展生存期
机器学习
总体生存率
比例危险模型
内科学
肿瘤科
计算机科学
作者
Marianne Pavel,Clarisse Dromain,Maxime Ronot,Niklaus Schaefer,Dalvinder Mandair,Delphine Gueguen,D. Elvira,Simon Jégou,Félix Balazard,Olivier Dehaene,Kathryn Schutte
出处
期刊:Future Oncology
[Future Medicine]
日期:2023-07-27
卷期号:19 (32): 2185-2199
被引量:5
标识
DOI:10.2217/fon-2022-1136
摘要
Aim: The RAISE project assessed whether deep learning could improve early progression-free survival (PFS) prediction in patients with neuroendocrine tumors. Patients & methods: Deep learning models extracted features from CT scans from patients in CLARINET (NCT00353496) (n = 138/204). A Cox model assessed PFS prediction when combining deep learning with the sum of longest diameter ratio (SLDr) and logarithmically transformed CgA concentration (logCgA), versus SLDr and logCgA alone. Results: Deep learning models extracted features other than lesion shape to predict PFS at week 72. No increase in performance was achieved with deep learning versus SLDr and logCgA models alone. Conclusion: Deep learning models extracted relevant features to predict PFS, but did not improve early prediction based on SLDr and logCgA.
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