可解释的深度学习模型WAL-net用于癌症患者潜在可逆性营养不良的个性化评估:一项多中心队列研究。

IF 3 3区 医学 Q2 NUTRITION & DIETETICS
British Journal of Nutrition Pub Date : 2025-07-28 Epub Date: 2025-07-10 DOI:10.1017/S000711452510384X
Liangyu Yin, Ning Tong, Na Li, Jie Liu, Wei Li, Jiuwei Cui, Zengqing Guo, Qinghua Yao, Fuxiang Zhou, Ming Liu, Zhikang Chen, Huiqing Yu, Tao Li, Zengning Li, Pingping Jia, Chunhua Song, Hongxia Xu, Hanping Shi
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引用次数: 0

摘要

持续的营养不良与癌症的不良临床结果有关。然而,评估其可逆性可能具有挑战性。本研究旨在利用机器学习(ML)预测癌症患者的可逆性营养不良(RM)。一项包括住院肿瘤患者的多中心队列研究。营养不良的诊断采用了国际共识。RM被定义为患者入院时营养不良的阳性诊断,一个月后变为阴性。体重和骨骼肌的时间序列数据使用长短期记忆(LSTM)架构建模来预测RM。将该模型命名为WAL-net,并对其性能、可解释性、临床相关性和通用性进行评价。我们调查了4254例癌症相关营养不良患者(发现组=2977,测试组=1277)。男性2783例,女性1471例(中位年龄61岁)。754例(17.7%)患者发现RM。RM组和非RM组表现出不同的体重和肌肉动力学模式,RM与癌症恶病质的进展阶段呈负相关(r=-0.340, PP)
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Explainable deep learning model WAL-net for individualised assessment of potentially reversible malnutrition in patients with cancer: a multicentre cohort study.

Persistent malnutrition is associated with poor clinical outcomes in cancer. However, assessing its reversibility can be challenging. The present study aimed to utilise machine learning (ML) to predict reversible malnutrition (RM) in patients with cancer. A multicentre cohort study including hospitalised oncology patients. Malnutrition was diagnosed using an international consensus. RM was defined as a positive diagnosis of malnutrition upon patient admission which turned negative one month later. Time-series data on body weight and skeletal muscle were modelled using a long short-term memory architecture to predict RM. The model was named as WAL-net, and its performance, explainability, clinical relevance and generalisability were evaluated. We investigated 4254 patients with cancer-associated malnutrition (discovery set = 2977, test set = 1277). There were 2783 men and 1471 women (median age = 61 years). RM was identified in 754 (17·7 %) patients. RM/non-RM groups showed distinct patterns of weight and muscle dynamics, and RM was negatively correlated to the progressive stages of cancer cachexia (r = -0·340, P < 0·001). WAL-net was the state-of-the-art model among all ML algorithms evaluated, demonstrating favourable performance to predict RM in the test set (AUC = 0·924, 95 % CI = 0·904, 0·944) and an external validation set (n 798, AUC = 0·909, 95 % CI = 0·876, 0·943). Model-predicted RM using baseline information was associated with lower future risks of underweight, sarcopenia, performance status decline and progression of malnutrition (all P < 0·05). This study presents an explainable deep learning model, the WAL-net, for early identification of RM in patients with cancer. These findings might help the management of cancer-associated malnutrition to optimise patient outcomes in multidisciplinary cancer care.

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来源期刊
British Journal of Nutrition
British Journal of Nutrition 医学-营养学
CiteScore
6.60
自引率
5.60%
发文量
740
审稿时长
3 months
期刊介绍: British Journal of Nutrition is a leading international peer-reviewed journal covering research on human and clinical nutrition, animal nutrition and basic science as applied to nutrition. The Journal recognises the multidisciplinary nature of nutritional science and includes material from all of the specialities involved in nutrition research, including molecular and cell biology and nutritional genomics.
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