有监督的机器学习应用于护理笔记,以确定儿童癌症患者对社会心理支持的需求。

IF 3.2 Q1 HEALTH CARE SCIENCES & SERVICES
Frontiers in digital health Pub Date : 2025-08-07 eCollection Date: 2025-01-01 DOI:10.3389/fdgth.2025.1585309
Akseli Reunamo, Hans Moen, Sanna Salanterä, Päivi M Lähteenmäki
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引用次数: 0

摘要

例如,与他们的兄弟姐妹相比,儿童癌症幸存者有更高的心理健康和适应问题风险。评估对社会心理支持的需求对预防至关重要。本项目旨在研究以文本分类的形式使用监督机器学习,在癌症诊断至少一年之后,从护理笔记中识别需要心理社会支持的儿童癌症患者。方法:我们评估了三种知名的基于机器学习的模型,从1672名患者的自由文本护理笔记中识别出在精神卫生保健部门预约门诊的患者。模型训练以诊断为糖尿病或癌症的儿童为对象,模型评价以诊断为癌症的儿童为对象。采用分层五重嵌套交叉验证。我们将其设计为一个二元分类任务,具有以下标签:不需要支持(0)或心理社会支持(1)。具有后一种标签的患者是通过在初次诊断后至少1年在精神卫生保健单位进行门诊预约来确定的。结果:经3次重复嵌套交叉验证,同时训练了癌症和糖尿病患者的随机森林分类模型在受试者工作特征曲线下的平均面积为0.798,在癌症患者群体中表现最佳,在贝叶斯相关t检验两两比较所有分类器时,其99%概率(可信区间为-0.2840 ~ -0.0422)优于仅训练癌症患者的基于神经网络的模型。结论:利用患者工作特征曲线下面积良好的护理笔记,利用机器学习预测儿童癌症患者需要心理社会支持是可行的。报道的实验表明,机器学习可以帮助识别在以后的生活中可能需要心理健康支持的患者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Supervised machine learning applied in nursing notes for identifying the need of childhood cancer patients for psychosocial support.

Supervised machine learning applied in nursing notes for identifying the need of childhood cancer patients for psychosocial support.

Supervised machine learning applied in nursing notes for identifying the need of childhood cancer patients for psychosocial support.

Supervised machine learning applied in nursing notes for identifying the need of childhood cancer patients for psychosocial support.

Introduction: Childhood cancer survivors have a higher risk of mental health and adaptive problems compared with their siblings, for example. Assessing the need for psychosocial support is essential for prevention. This project aims to investigate the use of supervised machine learning in the form of text classification in identifying childhood cancer patients needing psychosocial support from nursing notes when at least 1 year had passed from their cancer diagnosis.

Methods: We evaluated three well-known machine learning-based models to recognize patients who had outpatient clinic reservations in the mental health-related care units from free-text nursing notes of 1,672 patients. For model training, the patients were children diagnosed with diabetes mellitus or cancer, while evaluation of the model was done on the patients diagnosed with cancer. A stratified fivefold nested cross-validation was used. We designed this as a binary classification task, with the following labels: no support (0) or psychosocial support (1) was needed. Patients with the latter label were identified by having an outpatient appointment reservation in a mental health-related care unit at least 1 year after their primary diagnosis.

Results: The random forest classification model trained on both cancer and diabetes patients performed best for the cancer patient population in three-times repeated nested cross-validation with 0.798 mean area under the receiver operating characteristics curve and was better with 99% probability (credibility interval -0.2840 to -0.0422) than the neural network-based model using only cancer patients in training when comparing all classifiers pairwise by using the Bayesian correlated t-test.

Conclusions: Using machine learning to predict childhood cancer patients needing psychosocial support was possible using nursing notes with a good area under the receiver operating characteristics curve. The reported experiment indicates that machine learning may assist in identifying patients likely to need mental health-related support later in life.

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CiteScore
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