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开发和验证用于乳腺癌幸存者淋巴水肿检测的预测模型。

Developing and validating a prediction model for lymphedema detection in breast cancer survivors.

机构信息

Division of Medical & Surgical Nursing, School of Nursing, Peking University, 100191, Beijing, China.

Division of Medical & Surgical Nursing, School of Nursing, Peking University, 100191, Beijing, China.

出版信息

Eur J Oncol Nurs. 2021 Oct;54:102023. doi: 10.1016/j.ejon.2021.102023. Epub 2021 Aug 31.

Abstract

PURPOSE

Early detection and intervention of lymphedema is essential for improving the quality of life of breast cancer survivors. Previous studies have shown that patients have symptoms such as arm tightness and arm heaviness before experiencing obvious limb swelling. Thus, this study aimed to develop a symptom-warning model for the early detection of breast cancer-related lymphedema.

METHODS

A cross-sectional study was conducted at a tertiary hospital in Beijing between April 2017 and December 2018. A total of 24 lymphedema-associated symptoms were identified as candidate predictors. Circumferential measurements were used to diagnose lymphedema. The data were randomly split into training and validation sets with a 7:3 ratio to derive and evaluate six machine learning models. Both the discrimination and calibration of each model were assessed on the validation set.

RESULTS

A total of 533 patients were included in the study. The logistic regression model showed the best performance for early detection of lymphedema, with AUC = 0.889 (0.840-0.938), sensitivity = 0.771, specificity = 0.883, accuracy = 0.825, and Brier scores = 0.141. Calibration was also acceptable. It has been deployed as an open-access web application, allowing users to estimate the probability of lymphedema individually in real time. The application can be found at https://apredictiontoolforlymphedema.shinyapps.io/dynnomapp/.

CONCLUSION

The symptom-warning model developed by logistic regression performed well in the early detection of lymphedema. Integrating this model into an open-access web application is beneficial to patients and healthcare providers to monitor lymphedema status in real-time.

摘要

目的

早期发现和干预淋巴水肿对于提高乳腺癌幸存者的生活质量至关重要。先前的研究表明,患者在出现明显肢体肿胀之前会出现手臂紧绷和手臂沉重等症状。因此,本研究旨在开发一种用于早期检测乳腺癌相关淋巴水肿的症状预警模型。

方法

本研究采用在北京一家三级医院进行的横断面研究。共确定了 24 种与淋巴水肿相关的症状作为候选预测因素。采用周径测量法诊断淋巴水肿。将数据随机分为训练集和验证集,比例为 7:3,以推导出并评估六种机器学习模型。在验证集上评估每个模型的区分度和校准度。

结果

共纳入 533 例患者。逻辑回归模型在早期检测淋巴水肿方面表现最佳,AUC=0.889(0.840-0.938),敏感性为 0.771,特异性为 0.883,准确性为 0.825,Brier 分数为 0.141。校准度也可以接受。它已被部署为一个开放访问的网络应用程序,允许用户实时单独估计发生淋巴水肿的概率。该应用程序可在 https://apredictiontoolforlymphedema.shinyapps.io/dynnomapp/ 找到。

结论

基于逻辑回归的症状预警模型在早期检测淋巴水肿方面表现良好。将该模型集成到开放访问的网络应用程序中,有利于患者和医疗保健提供者实时监测淋巴水肿状况。

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