Lu Sheng-Chieh, Xu Cai, Nguyen Chandler H, Geng Yimin, Pfob André, Sidey-Gibbons Chris
Department of Symptom Research, The University of Texas MD Anderson Cancer Center, Houston, TX, United States.
McGovern Medical School, University of Texas Health Science Center, Houston, TX, United States.
JMIR Med Inform. 2022 Mar 14;10(3):e33182. doi: 10.2196/33182.
In the United States, national guidelines suggest that aggressive cancer care should be avoided in the final months of life. However, guideline compliance currently requires clinicians to make judgments based on their experience as to when a patient is nearing the end of their life. Machine learning (ML) algorithms may facilitate improved end-of-life care provision for patients with cancer by identifying patients at risk of short-term mortality.
This study aims to summarize the evidence for applying ML in ≤1-year cancer mortality prediction to assist with the transition to end-of-life care for patients with cancer.
We searched MEDLINE, Embase, Scopus, Web of Science, and IEEE to identify relevant articles. We included studies describing ML algorithms predicting ≤1-year mortality in patients of oncology. We used the prediction model risk of bias assessment tool to assess the quality of the included studies.
We included 15 articles involving 110,058 patients in the final synthesis. Of the 15 studies, 12 (80%) had a high or unclear risk of bias. The model performance was good: the area under the receiver operating characteristic curve ranged from 0.72 to 0.92. We identified common issues leading to biased models, including using a single performance metric, incomplete reporting of or inappropriate modeling practice, and small sample size.
We found encouraging signs of ML performance in predicting short-term cancer mortality. Nevertheless, no included ML algorithms are suitable for clinical practice at the current stage because of the high risk of bias and uncertainty regarding real-world performance. Further research is needed to develop ML models using the modern standards of algorithm development and reporting.
在美国,国家指南建议在生命的最后几个月应避免积极的癌症治疗。然而,目前要遵循指南,临床医生需根据自身经验判断患者何时接近生命终点。机器学习(ML)算法或许能通过识别有短期死亡风险的患者,促进为癌症患者提供更好的临终关怀。
本研究旨在总结将ML应用于预测≤1年癌症死亡率以协助癌症患者向临终关怀过渡的证据。
我们检索了MEDLINE、Embase、Scopus、Web of Science和IEEE以识别相关文章。我们纳入了描述预测肿瘤患者≤1年死亡率的ML算法的研究。我们使用预测模型偏倚风险评估工具来评估纳入研究的质量。
最终综合分析中我们纳入了15篇文章,涉及110,058名患者。在这15项研究中,12项(80%)存在高偏倚风险或偏倚风险不明确。模型性能良好:受试者工作特征曲线下面积范围为0.72至0.92。我们确定了导致模型有偏倚的常见问题,包括使用单一性能指标、报告不完整或建模方法不当以及样本量小。
我们发现ML在预测短期癌症死亡率方面有令人鼓舞的表现迹象。然而,由于偏倚风险高以及关于实际性能的不确定性,目前纳入的ML算法均不适用于临床实践。需要进一步研究以使用算法开发和报告的现代标准来开发ML模型。