Novel Approach to Personalized Physician Recommendations Using Semantic Features and Response Metrics: Model Evaluation Study.

IF 2.6 Q2 HEALTH CARE SCIENCES & SERVICES JMIR Human Factors Pub Date : 2024-08-15 DOI:10.2196/57670
Yingbin Zheng, Yunping Cai, Yiwei Yan, Sai Chen, Kai Gong
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Abstract

Background: The rapid growth of web-based medical services has highlighted the significance of smart triage systems in helping patients find the most appropriate physicians. However, traditional triage methods often rely on department recommendations and are insufficient to accurately match patients' textual questions with physicians' specialties. Therefore, there is an urgent need to develop algorithms for recommending physicians.

Objective: This study aims to develop and validate a patient-physician hybrid recommendation (PPHR) model with response metrics for better triage performance.

Methods: A total of 646,383 web-based medical consultation records from the Internet Hospital of the First Affiliated Hospital of Xiamen University were collected. Semantic features representing patients and physicians were developed to identify the set of most similar questions and semantically expand the pool of recommended physician candidates, respectively. The physicians' response rate feature was designed to improve candidate rankings. These 3 characteristics combine to create the PPHR model. Overall, 5 physicians participated in the evaluation of the efficiency of the PPHR model through multiple metrics and questionnaires as well as the performance of Sentence Bidirectional Encoder Representations from Transformers and Doc2Vec in text embedding.

Results: The PPHR model reaches the best recommendation performance when the number of recommended physicians is 14. At this point, the model has an F1-score of 76.25%, a proportion of high-quality services of 41.05%, and a rating of 3.90. After removing physicians' characteristics and response rates from the PPHR model, the F1-score decreased by 12.05%, the proportion of high-quality services fell by 10.87%, the average hit ratio dropped by 1.06%, and the rating declined by 11.43%. According to whether those 5 physicians were recommended by the PPHR model, Sentence Bidirectional Encoder Representations from Transformers achieved an average hit ratio of 88.6%, while Doc2Vec achieved an average hit ratio of 53.4%.

Conclusions: The PPHR model uses semantic features and response metrics to enable patients to accurately find the physician who best suits their needs.

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利用语义特征和响应指标实现个性化医生推荐的新方法:模型评估研究。
背景:网络医疗服务的快速发展凸显了智能分诊系统在帮助患者找到最合适医生方面的重要性。然而,传统的分诊方法往往依赖于科室推荐,不足以准确匹配患者的文字问题和医生的专业。因此,迫切需要开发推荐医生的算法:本研究旨在开发并验证一种带有响应指标的患者-医生混合推荐(PPHR)模型,以提高分诊性能:方法:从厦门大学附属第一医院互联网医院收集了646,383条网络问诊记录。开发了代表患者和医生的语义特征,分别用于识别最相似问题集和从语义上扩展推荐医生候选人库。医生的回复率特征旨在提高候选医生的排名。这 3 个特征结合起来就形成了 PPHR 模型。总之,5 位医生通过多种指标和问卷参与了 PPHR 模型效率的评估,以及 Transformers 的句子双向编码器表示法和 Doc2Vec 在文本嵌入方面的性能评估:当推荐医生的数量为 14 人时,PPHR 模型的推荐性能最佳。此时,模型的 F1 分数为 76.25%,优质服务比例为 41.05%,评分为 3.90。从 PPHR 模型中剔除医生特征和回复率后,F1 分数下降了 12.05%,优质服务比例下降了 10.87%,平均命中率下降了 1.06%,评分下降了 11.43%。根据这 5 位医生是否被 PPHR 模型推荐,来自 Transformers 的句子双向编码器表示法的平均命中率为 88.6%,而 Doc2Vec 的平均命中率为 53.4%:PPHR模型利用语义特征和响应度量使患者能够准确找到最适合自己的医生。
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来源期刊
JMIR Human Factors
JMIR Human Factors Medicine-Health Informatics
CiteScore
3.40
自引率
3.70%
发文量
123
审稿时长
12 weeks
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