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. 2022 May 5;19(9):5594.
doi: 10.3390/ijerph19095594.

Self-Adaptive Telemedicine Specialist Recommendation Considering Specialist Activity and Patient Feedback

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Self-Adaptive Telemedicine Specialist Recommendation Considering Specialist Activity and Patient Feedback

Wei Lu et al. Int J Environ Res Public Health. .

Abstract

Purpose: With the rapid development of medical informatization, information overload and asymmetry have become major obstacles that limit patients' ability to find appropriate telemedicine specialists. Although doctor recommendation methods have been proposed, they fail to address data sparsity and cold-start issues, and electronic medical records (EMRs), patient preferences, potential interest of service providers and the changes over time are largely under-explored. Therefore, this study develops a self-adaptive telemedicine specialist recommendation method that incorporates specialist activity and patient utility feedback from the perspective of privacy protection to fill the research gaps. Methods: First, text vectorization, view similarity and probabilistic topic model are used to construct the patient and specialist feature models based on patients' EMRs and specialists' long- and short-term knowledge backgrounds, respectively. Second, the recommended specialist candidate set and recommendation index are obtained based on the similarity between patient features. Then, the specialist long-term knowledge feature model is used to update the newly registered specialist recommendation index and the recommended specialist candidate set to overcome the data sparsity and cold-start issues, and the specialist short-term knowledge feature model is adopted to extend the recommended specialist candidate set at the semantic level. Finally, we introduce the specialists' activity and patients' perceived utility feedback mechanism to construct a closed-loop adjusted and optimized specialist recommendation method. Results: An empirical study was conducted integrating EMRs of telemedicine patients from the National Telemedicine Center of China and specialists' profiles and ratings from an online healthcare platform. The proposed method successfully recommended relevant and active telemedicine specialists to the target patient, and increased the recommended opportunities for newly registered specialists to some extent. Conclusions: The proposed method emphasizes the adaptability and acceptability of the recommended results while ensuring their accuracy and relevance. Specialists' activity and patients' perceived utility jointly contribute to the acceptability of recommended results, and the recommendation strategy achieves the organic fusion of the two. Several comparative experiments demonstrate the effectiveness and operability of the hybrid recommendation strategy under the premise of data sparsity and privacy protection, enabling effective matching of patients' demand and service providers' capabilities, and providing beneficial insights for data-driven telemedicine services.

Keywords: activity; cold start; feedback adjustment; specialist recommendation; telemedicine.

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Conflict of interest statement

The authors declare no conflict of interest.

Figures

Figure 1
Figure 1
Telemedicine specialist recommendation framework.
Figure 2
Figure 2
Self-adaptive telemedicine specialist recommendation approach flowchart.
Figure 3
Figure 3
LDA probabilistic model.
Figure 4
Figure 4
Distribution of consultations.
Figure 5
Figure 5
Perplexity.
Figure 6
Figure 6
Performance of the hybrid recommendation model with different preferences.
Figure 7
Figure 7
Comparison of Accuracy and Recall results.
Figure 8
Figure 8
Comparison of Relevance and Activity.
Figure 9
Figure 9
The rationality evaluation of the two recommendation methods.

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