Evaluating the quality of home care in community health service centres: A machine learning approach

Author:

Xia Qiujie1,Huang Qiyuan2,Li Jingjie1,Xu Yue13,Ge Song4,Zhang Xiao5,Li Mei6,Yu Dehong6,Tang Xianping1ORCID,Xia Youbing1

Affiliation:

1. School of Nursing Xuzhou Medical University Xuzhou Jiangsu China

2. School of Nursing Fujian Medical University Fuzhou Fujian China

3. Affiliated Hospital of Xuzhou Medical University Xuzhou Jiangsu China

4. Department of Natural Sciences University of Houston‐Downtown Houston Texas USA

5. School of Information & Engineering, Xuzhou Medical University Xuzhou Jiangsu China

6. The People's Hospital of Pizhou Xuzhou Jiangsu China

Abstract

AbstractAimsThe aim of the study is to develop a model using a machine learning approach that can effectively identify the quality of home care in communities.DesignA cross‐sectional design.MethodsIn this study, we evaluated the quality of home care in 170 community health service centres between October 2022 and February 2023. The Home Care Service Quality Questionnaire was used to collect information on home care structure, process and outcome quality. Then, an intelligent and comprehensive evaluation model was developed using a convolutional neural network, and its performance was compared with random forest and logistic regression models through various performance indicators.ResultsThe convolutional neural network model was built upon seven variables, which encompassed the qualification of home nursing staff, developing and practicing emergency plan to cope with different emergency rescues in home environment, being equipped with medication and supplies for first aid according to specific situations, assessing nutrition condition of home patients, allocation of the number of home nursing staff, cases of new pressure ulcers and patient satisfaction rate. Remarkably, the convolutional neural network model demonstrated superior performance, outperforming both the random forest and regression models.ConclusionThe successful development and application of the convolutional neural network model highlight its ability to leverage data from community health service centres for rapid and accurate grading of home care quality. This research points the way to home care quality improvement.ImpactThe model proposed in this study, coupled with the aforementioned factors, is expected to enhance the accuracy and efficiency of a comprehensive evaluation of home care quality. It will also help managers to take purposeful measures to improve the quality of home care.Reporting MethodThe reporting of this study (Observational, cross‐sectional study) conforms to the STROBE statement.Patient or Public ContributionNo patient or public contribution.Implications for the Profession and/or Patient CareThe application of this model has the potential to contribute to the advancement of high‐quality home care, particularly in lower‐middle‐income communities.

Publisher

Wiley

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