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Artificial neural networks for simultaneously predicting the risk of multiple co‐occurring symptoms among patients with cancer

机译:人工神经网络同时预测癌症患者多次共同发生症状的风险

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摘要

Patients with cancer often exhibit multiple co‐occurring symptoms which can impact the type of treatment received, recovery, and long‐term health. We aim to simultaneously predict the risk of three symptoms: severe pain, moderate‐severe depression, and poor well‐being in order to flag patients who may benefit from pre‐emptive early symptom management. This was a retrospective population‐based cohort study of adults diagnosed with cancer between 2008 and 2015. We developed and tested an Artificial Neural Network (ANN) model to predict the risk of multiple co‐occurring symptoms within 6 months after diagnosis. The ANN model derived from a training cohort was assessed on an independent test cohort for model performance based on sensitivity, specificity, accuracy, AUC, and calibration. The mutually exclusive training and test cohorts consisted of 35,606 and 10,498 patients, respectively. The area under the curve for the risk of experiencing severe pain, moderate‐severe depression, and poor well‐being were 71%, 73%, and 70%, respectively. Patient characteristics at highest risk of simultaneously experiencing these three symptoms included: those with lung cancer, late stage cancer, existing chronic conditions such as osteoarthritis, mood disorder, hypertension, diabetes, and coronary disease. Patients with over a 40% risk of severe pain also had over a 70% risk of depression, and over a 55% risk of poor well‐being. Our ANN model was able to simultaneously predict the risk of pain, depression, and lack of well‐being. Accurate prediction of future symptom burden can serve as an early indicator tool so that providers can implement timely interventions for symptom management, ultimately improving cancer care and quality of life.
机译:患有癌症的患者通常表现出多种共同发生的症状,可以影响所接受,恢复和长期健康的治疗类型。我们的目标是同时预测三种症状的风险:严重的疼痛,中度严重的抑郁症,并且良好的幸福才能标记可能从先发制人的早期症状管理中受益的患者。这是一项基于回顾性的人口群组,诊断患有2008年至2015年癌症的成人研究。我们开发并测试了一个人工神经网络(ANN)模型,以预测诊断后6个月内的多种共同发生症状的风险。根据灵敏度,特异性,准确性,AUC和校准,在独立测试队列中评估了培训队列的ANN模型。互斥培训和测试队列分别由35,606和10,498名患者组成。曲线下的面积对于经历严重疼痛,中度严重的抑郁症,较差良好的风险分别为71%,73%和70%。患者特征在于同时体验这三种症状的最高风险包括:具有肺癌,晚期癌症,患者患者,情绪障碍,高血压,糖尿病和冠状动脉疾病等慢性病的人。患有40%的严重疼痛风险超过40%的患者也有70%的抑郁症风险,超过55%的风险风险较差。我们的Ann模型能够同时预测疼痛,抑郁和缺乏福祉的风险。准确的预测未来的症状负担可以作为早期指标工具,以便提供商可以及时介入症状管理,最终提高癌症护理和生活质量。

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