Department of Oncology, Senior Department of Oncology, The Fifth Medical Center of PLA General Hospital, No. 8 Dongdajie Street, Fengtai District, Beijing, China.
Senior Department of Orthopedics, The Fourth Medical Center of PLA General Hospital, No. 51 Fucheng Road, Haidian District, Beijing, 100048, China.
Spine J. 2023 Sep;23(9):1255-1269. doi: 10.1016/j.spinee.2023.05.009. Epub 2023 May 12.
Metastatic spinal disease is an advanced stage of cancer patients and often suffer from terrible psychological health status; however, the ability to estimate the risk probability of this adverse outcome using current available data is very limited.
The goal of this study was to propose a precise model based on machine learning techniques to predict psychological status among cancer patients with spinal metastatic disease.
STUDY DESIGN/SETTING: A prospective cohort study.
A total of 1043 cancer patients with spinal metastatic disease were included.
The main outcome was severe psychological distress.
The total of patients was randomly divided into a training dataset and a testing dataset on a ratio of 9:1. Patients' demographics, lifestyle choices, cancer-related features, clinical manifestations, and treatments were collected as potential model predictors in the study. Five machine learning algorithms, including XGBoosting machine, random forest, gradient boosting machine, support vector machine, and ensemble prediction model, as well as a logistic regression model were employed to train and optimize models in the training set, and their predictive performance was assessed in the testing set.
Up to 21.48% of all patients who were recruited had severe psychological distress. Elderly patients (p<0.001), female (p =0.045), current smoking (p=0.002) or drinking (p=0.003), a lower level of education (p<0.001), a stronger spiritual desire (p<0.001), visceral metastasis (p=0.005), and a higher Eastern Cooperative Oncology Group (ECOG) score (p<0.001) were significantly associated with worse psychological health. With an area under the curve (AUC) of 0.865 (95% CI: 0.788-0.941) and an accuracy of up to 0.843, the gradient boosting machine algorithm performed best in the prediction of the outcome, followed by the XGBooting machine algorithm (AUC: 0.851, 95% CI: 0.768-0.934; Accuracy: 0.826) and ensemble prediction (AUC: 0.851, 95% CI: 0.770-0.932; Accuracy: 0.809) in the testing set. In contrast, the AUC of the logistic regression model was only 0.836 (95% CI: 0.756-0.916; Accuracy: 0.783).
Machine learning models have greater predictive power and can offer useful tools to identify individuals with spinal metastatic disease who are experiencing severe psychological distress.
转移性脊柱疾病是癌症患者的晚期阶段,往往患有严重的心理健康问题;然而,使用当前可用数据估计这种不良后果的风险概率的能力非常有限。
本研究旨在提出一种基于机器学习技术的精确模型,以预测患有脊柱转移性疾病的癌症患者的心理状态。
研究设计/设置:前瞻性队列研究。
共纳入 1043 例脊柱转移性癌症患者。
严重心理困扰。
将患者总数随机分为训练数据集和测试数据集,比例为 9:1。研究中收集了患者的人口统计学、生活方式选择、癌症相关特征、临床表现和治疗作为潜在模型预测因子。使用五种机器学习算法,包括 XGBoosting 机、随机森林、梯度提升机、支持向量机和集成预测模型,以及逻辑回归模型,在训练集中训练和优化模型,并在测试集中评估其预测性能。
多达 21.48%的入组患者有严重的心理困扰。老年患者(p<0.001)、女性(p=0.045)、当前吸烟(p=0.002)或饮酒(p=0.003)、教育程度较低(p<0.001)、精神需求较强(p<0.001)、内脏转移(p=0.005)和较高的东部合作肿瘤学组(ECOG)评分(p<0.001)与较差的心理健康显著相关。梯度提升机算法的曲线下面积(AUC)为 0.865(95%CI:0.788-0.941),准确率高达 0.843,在预测结果方面表现最佳,其次是 XGBooting 机算法(AUC:0.851,95%CI:0.768-0.934;准确率:0.826)和集成预测(AUC:0.851,95%CI:0.770-0.932;准确率:0.809)。相比之下,逻辑回归模型的 AUC 仅为 0.836(95%CI:0.756-0.916;准确率:0.783)。
机器学习模型具有更强的预测能力,可以提供有用的工具来识别患有脊柱转移性疾病且经历严重心理困扰的个体。