A.D. Coles , C.D. McInerney , K. Zucker , S. Cheeseman , O.A. Johnson , G. Hall
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Machine Learning models may expedite the review of health records and facilitate the assessment of alternative cancer therapies.</p></div><div><h3>Materials and methods</h3><p>This paper evaluates the use of four machine learning models (random forests, conditional inference trees, decision trees, and logistic regression) in identifying proxy dates of epithelial ovarian cancer recurrence/progression from chemotherapy data, in 531 patients at Leeds Teaching Hospital Trust.</p></div><div><h3>Results</h3><p>The random forest achieved the highest F1 score of 0.941 (95% confidence interval 0.916-0.968) when identifying recurrence events. Both the random forest and decision tree models’ classifications closely conform to chart-reviewed time to next treatment, serving as a surrogate for recurrence-free survival. Additionally, all models reached an F1 score >0.940 when identifying patients whose cancer recurred/progressed.</p></div><div><h3>Conclusions</h3><p>Our models proficiently identify both proxy dates for recurrence/progression diagnoses and patients whose cancer recurred/progressed. 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Machine Learning models may expedite the review of health records and facilitate the assessment of alternative cancer therapies.</p></div><div><h3>Materials and methods</h3><p>This paper evaluates the use of four machine learning models (random forests, conditional inference trees, decision trees, and logistic regression) in identifying proxy dates of epithelial ovarian cancer recurrence/progression from chemotherapy data, in 531 patients at Leeds Teaching Hospital Trust.</p></div><div><h3>Results</h3><p>The random forest achieved the highest F1 score of 0.941 (95% confidence interval 0.916-0.968) when identifying recurrence events. Both the random forest and decision tree models’ classifications closely conform to chart-reviewed time to next treatment, serving as a surrogate for recurrence-free survival. 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引用次数: 0
摘要
背景世界各地的电子健康记录中对癌症复发的记录很少。这阻碍了对癌症治疗效果的研究。目前,复发/进展诊断日期的回顾性识别是由工作人员手动查看患者的健康记录来实现的。这种方法成本高、耗时长、效率低。材料与方法本文评估了四种机器学习模型(随机森林、条件推理树、决策树和逻辑回归)在识别利兹教学医院信托基金 531 名患者化疗数据中上皮性卵巢癌复发/进展替代日期方面的应用。随机森林模型和决策树模型的分类结果与图表显示的下次治疗时间非常吻合,可作为无复发生存期的替代指标。此外,在识别癌症复发/进展患者时,所有模型的 F1 分数都达到了 0.940。考虑到随机森林和决策树的性能相似,应根据协助病历审查所需的可解释性以及在现有架构中实施的难易程度来决定是否选择模型。
Evaluation of machine learning methods for the retrospective detection of ovarian cancer recurrences from chemotherapy data
Background
Cancer recurrences are poorly recorded within electronic health records around the world. This hinders research into the efficacy of cancer treatments. Currently, the retrospective identification of recurrence/progression diagnosis dates is achieved by staff who manually review patients’ health records. This is expensive, time-consuming, and inefficient. Machine Learning models may expedite the review of health records and facilitate the assessment of alternative cancer therapies.
Materials and methods
This paper evaluates the use of four machine learning models (random forests, conditional inference trees, decision trees, and logistic regression) in identifying proxy dates of epithelial ovarian cancer recurrence/progression from chemotherapy data, in 531 patients at Leeds Teaching Hospital Trust.
Results
The random forest achieved the highest F1 score of 0.941 (95% confidence interval 0.916-0.968) when identifying recurrence events. Both the random forest and decision tree models’ classifications closely conform to chart-reviewed time to next treatment, serving as a surrogate for recurrence-free survival. Additionally, all models reached an F1 score >0.940 when identifying patients whose cancer recurred/progressed.
Conclusions
Our models proficiently identify both proxy dates for recurrence/progression diagnoses and patients whose cancer recurred/progressed. Considering the similar performance of the random forest and decision tree, model preference should be determined by the interpretability required to assist chart review and the ease of implementation into existing architecture.