基于语义和多准则过滤的药品推荐系统

Qusai Y. Shambour, Mahran Al-Zyoud, A. Abu-Shareha, Mosleh M. Abualhaj
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For instance, WebMD and similar platforms offer valuable tools and information to help manage patients’ health, such as searching for medicines based on their medical conditions. Nonetheless, patients often find it arduous and time-consuming to sort through all the available medications to find the ones that match their specific medical conditions. To address this problem, personalized recommender systems have emerged as a practical solution for mitigating the burden of information overload and data sparsity-related issues that are frequently encountered on online healthcare platforms. Methodology: The study utilized a dataset of MC ratings obtained from WebMD, a popular healthcare website. Patients on this website can rate medications based on three criteria, including medication effectiveness, ease of use, and satisfaction, using a scale of 1 to 5. The WebMD MC rating dataset used in this study contains a total of 32,054 ratings provided by 2,136 patients for 845 different medicines. The proposed HSMCCF approach consists of two primary modules: a semantic filtering module and a multi-criteria filtering module. The semantic filtering module is designed to address the issues of data sparsity and new item problems by utilizing a medicine taxonomy that sorts medicines according to medical conditions and makes use of semantic relationships between them. This module identifies the medicines that are most likely to be relevant to patients based on their current medical conditions. The multi-criteria filtering module, on the other hand, enhances the approach’s ability to capture the complexity of patient preferences by considering multiple criteria and preferences through a unique similarity metric that incorporates both distance and structural similarities. This module ensures that patients receive more accurate and personalized medication recommendations. Moreover, a medicine reputation score is employed to ensure that the approach remains effective even when dealing with limited ratings or new items. Overall, the combination of these modules makes the proposed approach more robust and effective in providing personalized medicine recommendations for patients. Contribution: This study addresses the medicine recommendation problem by proposing a novel approach called Hybrid Semantic-based Multi-Criteria Collaborative Filtering (HSMCCF). This approach effectively recommends medications for patients based on their medical conditions and is specifically designed to overcome issues related to data sparsity and new item recommendations that are commonly encountered on online healthcare platforms. The proposed approach addresses data sparsity and new item issues by incorporating a semantic filtering module and a multi-criteria filtering module. The semantic filtering module sorts medicines based on medical conditions and uses semantic relationships to identify relevant ones. The multi-criteria filtering module accurately captures patient preferences and provides precise recommendations using a novel similarity metric. Additionally, a medicine reputation score is also employed to further expand potential neighbors, improving predictive accuracy and coverage, particularly in sparse datasets or new items with few ratings. With the HSMCCF approach, patients can receive more personalized recommendations that are tailored to their unique medical needs and conditions. By leveraging a combination of semantic-based and multi-criteria filtering techniques, the proposed approach can effectively address the challenges associated with medicine recommendations on online healthcare platforms. Findings: The proposed HSMCCF approach demonstrated superior effectiveness compared to benchmark recommendation methods in multi-criteria rating datasets in terms of enhancing both prediction accuracy and coverage while effectively addressing data sparsity and new item challenges. Recommendations for Practitioners: By applying the proposed medicine recommendation approach, practitioners can develop a medicine recommendation system that can be integrated into online healthcare platforms. Patients can then utilize this system to make better-informed decisions regarding the medications that are most suitable for their specific medical conditions. This personalized approach to medication recommendations can ultimately lead to improved patient satisfaction. Recommendation for Researchers: Integrating patient medicine reviews is a promising way for researchers to elevate the proposed medicine recommendation approach. By leveraging patient reviews, the approach can gain a more comprehensive understanding of how certain medications perform for specific medical conditions. Additionally, exploring the relationship between MC-based ratings using an improved aggregation function can potentially enhance the accuracy of medication predictions. This involves analyzing the relationship between different criteria, such as medication effectiveness, ease of use, and satisfaction of the patients, and determining the optimal weighting for each criterion based on patient feedback. A more holistic approach that incorporates patient reviews and an improved aggregation function can enable the proposed medicine recommendation approach to provide more personalized and accurate recommendations to patients. Impact on Society: To mitigate the risk of infection during the COVID-19 pandemic, the promotion of online healthcare services was actively encouraged. This allowed patients to continue accessing care and receiving treatment while adhering to physical distancing guidelines and shielding measures where necessary. As a result, the implementation of personalized healthcare services for patients is expected to be a major disruptive force in healthcare in the coming years. This study proposes a personalized medicine recommendation approach that can effectively address this issue and aid patients in making informed decisions about the medications that are most suitable for their specific medical conditions. Future Research: One way that may enhance the proposed medicine recommendation approach is to incorporate patient medicine reviews. 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To address this problem, personalized recommender systems have emerged as a practical solution for mitigating the burden of information overload and data sparsity-related issues that are frequently encountered on online healthcare platforms. Methodology: The study utilized a dataset of MC ratings obtained from WebMD, a popular healthcare website. Patients on this website can rate medications based on three criteria, including medication effectiveness, ease of use, and satisfaction, using a scale of 1 to 5. The WebMD MC rating dataset used in this study contains a total of 32,054 ratings provided by 2,136 patients for 845 different medicines. The proposed HSMCCF approach consists of two primary modules: a semantic filtering module and a multi-criteria filtering module. The semantic filtering module is designed to address the issues of data sparsity and new item problems by utilizing a medicine taxonomy that sorts medicines according to medical conditions and makes use of semantic relationships between them. This module identifies the medicines that are most likely to be relevant to patients based on their current medical conditions. The multi-criteria filtering module, on the other hand, enhances the approach’s ability to capture the complexity of patient preferences by considering multiple criteria and preferences through a unique similarity metric that incorporates both distance and structural similarities. This module ensures that patients receive more accurate and personalized medication recommendations. Moreover, a medicine reputation score is employed to ensure that the approach remains effective even when dealing with limited ratings or new items. Overall, the combination of these modules makes the proposed approach more robust and effective in providing personalized medicine recommendations for patients. Contribution: This study addresses the medicine recommendation problem by proposing a novel approach called Hybrid Semantic-based Multi-Criteria Collaborative Filtering (HSMCCF). This approach effectively recommends medications for patients based on their medical conditions and is specifically designed to overcome issues related to data sparsity and new item recommendations that are commonly encountered on online healthcare platforms. The proposed approach addresses data sparsity and new item issues by incorporating a semantic filtering module and a multi-criteria filtering module. The semantic filtering module sorts medicines based on medical conditions and uses semantic relationships to identify relevant ones. The multi-criteria filtering module accurately captures patient preferences and provides precise recommendations using a novel similarity metric. Additionally, a medicine reputation score is also employed to further expand potential neighbors, improving predictive accuracy and coverage, particularly in sparse datasets or new items with few ratings. With the HSMCCF approach, patients can receive more personalized recommendations that are tailored to their unique medical needs and conditions. By leveraging a combination of semantic-based and multi-criteria filtering techniques, the proposed approach can effectively address the challenges associated with medicine recommendations on online healthcare platforms. Findings: The proposed HSMCCF approach demonstrated superior effectiveness compared to benchmark recommendation methods in multi-criteria rating datasets in terms of enhancing both prediction accuracy and coverage while effectively addressing data sparsity and new item challenges. Recommendations for Practitioners: By applying the proposed medicine recommendation approach, practitioners can develop a medicine recommendation system that can be integrated into online healthcare platforms. Patients can then utilize this system to make better-informed decisions regarding the medications that are most suitable for their specific medical conditions. This personalized approach to medication recommendations can ultimately lead to improved patient satisfaction. Recommendation for Researchers: Integrating patient medicine reviews is a promising way for researchers to elevate the proposed medicine recommendation approach. By leveraging patient reviews, the approach can gain a more comprehensive understanding of how certain medications perform for specific medical conditions. Additionally, exploring the relationship between MC-based ratings using an improved aggregation function can potentially enhance the accuracy of medication predictions. This involves analyzing the relationship between different criteria, such as medication effectiveness, ease of use, and satisfaction of the patients, and determining the optimal weighting for each criterion based on patient feedback. A more holistic approach that incorporates patient reviews and an improved aggregation function can enable the proposed medicine recommendation approach to provide more personalized and accurate recommendations to patients. Impact on Society: To mitigate the risk of infection during the COVID-19 pandemic, the promotion of online healthcare services was actively encouraged. This allowed patients to continue accessing care and receiving treatment while adhering to physical distancing guidelines and shielding measures where necessary. As a result, the implementation of personalized healthcare services for patients is expected to be a major disruptive force in healthcare in the coming years. 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引用次数: 0

摘要

目的:本研究旨在为在线医疗平台设计个性化的解决方案,通过为患者提供个性化的医疗服务,缓解信息过载和数据稀疏的问题。本文的主要重点是开发一种有效的药物推荐方法,根据患者的具体医疗条件推荐合适的药物。背景:随着越来越多的人更加关注自己的健康,使用在线医疗保健平台和电子服务作为诊断手段的人数显著增加。随着互联网的不断发展,这些平台和电子服务预计将在未来的医疗保健中发挥更重要的作用。例如,WebMD和类似的平台提供有价值的工具和信息来帮助管理患者的健康,比如根据他们的身体状况搜索药物。尽管如此,患者经常发现,从所有可用的药物中挑选出符合他们特定医疗条件的药物是一件既费力又耗时的事情。为了解决这个问题,个性化推荐系统已经成为一种实用的解决方案,可以减轻在线医疗保健平台上经常遇到的信息过载和数据稀疏相关问题的负担。方法:该研究利用了从WebMD(一个流行的医疗保健网站)获得的MC评级数据集。该网站的患者可以根据三个标准对药物进行评分,包括药物有效性、易用性和满意度,评分范围从1到5。本研究中使用的WebMD MC评分数据集包含2136名患者对845种不同药物提供的32,054个评分。提出的HSMCCF方法由两个主要模块组成:语义过滤模块和多标准过滤模块。语义过滤模块旨在通过使用药物分类法来解决数据稀疏性和新项目问题,该分类法根据医疗条件对药物进行分类,并利用它们之间的语义关系。该模块根据患者当前的医疗状况确定最可能与患者相关的药物。另一方面,多标准过滤模块通过结合距离和结构相似性的独特相似性度量来考虑多个标准和偏好,从而增强了该方法捕捉患者偏好复杂性的能力。该模块确保患者获得更准确和个性化的药物建议。此外,采用医学声誉评分来确保即使在处理有限评级或新项目时该方法仍然有效。总的来说,这些模块的组合使所提出的方法在为患者提供个性化医疗建议方面更加稳健和有效。贡献:本研究通过提出一种称为基于混合语义的多标准协同过滤(HSMCCF)的新方法来解决药物推荐问题。这种方法根据患者的医疗状况有效地为他们推荐药物,并且专门用于克服在线医疗保健平台上常见的与数据稀疏性和新项目推荐相关的问题。该方法通过结合语义过滤模块和多标准过滤模块来解决数据稀疏性和新条目问题。语义过滤模块根据医疗条件对药物进行分类,并使用语义关系识别相关药物。多标准过滤模块准确捕获患者的偏好,并使用新的相似性度量提供精确的建议。此外,药物声誉评分也用于进一步扩大潜在邻居,提高预测的准确性和覆盖率,特别是在稀疏数据集或评级很少的新项目中。通过HSMCCF的方法,患者可以收到更个性化的建议,这些建议是根据他们独特的医疗需求和情况量身定制的。通过利用基于语义和多标准过滤技术的组合,所提出的方法可以有效地解决在线医疗保健平台上与药物推荐相关的挑战。研究结果:在多标准评分数据集上,与基准推荐方法相比,所提出的HSMCCF方法在提高预测精度和覆盖范围方面表现出了卓越的有效性,同时有效地解决了数据稀疏性和新项目挑战。医生推荐:通过应用建议的药物推荐方法,医生可以开发一个药物推荐系统,该系统可以集成到在线医疗保健平台中。 目的:本研究旨在为在线医疗平台设计个性化的解决方案,通过为患者提供个性化的医疗服务,缓解信息过载和数据稀疏的问题。本文的主要重点是开发一种有效的药物推荐方法,根据患者的具体医疗条件推荐合适的药物。背景:随着越来越多的人更加关注自己的健康,使用在线医疗保健平台和电子服务作为诊断手段的人数显著增加。随着互联网的不断发展,这些平台和电子服务预计将在未来的医疗保健中发挥更重要的作用。例如,WebMD和类似的平台提供有价值的工具和信息来帮助管理患者的健康,比如根据他们的身体状况搜索药物。尽管如此,患者经常发现,从所有可用的药物中挑选出符合他们特定医疗条件的药物是一件既费力又耗时的事情。为了解决这个问题,个性化推荐系统已经成为一种实用的解决方案,可以减轻在线医疗保健平台上经常遇到的信息过载和数据稀疏相关问题的负担。方法:该研究利用了从WebMD(一个流行的医疗保健网站)获得的MC评级数据集。该网站的患者可以根据三个标准对药物进行评分,包括药物有效性、易用性和满意度,评分范围从1到5。本研究中使用的WebMD MC评分数据集包含2136名患者对845种不同药物提供的32,054个评分。提出的HSMCCF方法由两个主要模块组成:语义过滤模块和多标准过滤模块。语义过滤模块旨在通过使用药物分类法来解决数据稀疏性和新项目问题,该分类法根据医疗条件对药物进行分类,并利用它们之间的语义关系。该模块根据患者当前的医疗状况确定最可能与患者相关的药物。另一方面,多标准过滤模块通过结合距离和结构相似性的独特相似性度量来考虑多个标准和偏好,从而增强了该方法捕捉患者偏好复杂性的能力。该模块确保患者获得更准确和个性化的药物建议。此外,采用医学声誉评分来确保即使在处理有限评级或新项目时该方法仍然有效。总的来说,这些模块的组合使所提出的方法在为患者提供个性化医疗建议方面更加稳健和有效。贡献:本研究通过提出一种称为基于混合语义的多标准协同过滤(HSMCCF)的新方法来解决药物推荐问题。这种方法根据患者的医疗状况有效地为他们推荐药物,并且专门用于克服在线医疗保健平台上常见的与数据稀疏性和新项目推荐相关的问题。该方法通过结合语义过滤模块和多标准过滤模块来解决数据稀疏性和新条目问题。语义过滤模块根据医疗条件对药物进行分类,并使用语义关系识别相关药物。多标准过滤模块准确捕获患者的偏好,并使用新的相似性度量提供精确的建议。此外,药物声誉评分也用于进一步扩大潜在邻居,提高预测的准确性和覆盖率,特别是在稀疏数据集或评级很少的新项目中。通过HSMCCF的方法,患者可以收到更个性化的建议,这些建议是根据他们独特的医疗需求和情况量身定制的。通过利用基于语义和多标准过滤技术的组合,所提出的方法可以有效地解决在线医疗保健平台上与药物推荐相关的挑战。研究结果:在多标准评分数据集上,与基准推荐方法相比,所提出的HSMCCF方法在提高预测精度和覆盖范围方面表现出了卓越的有效性,同时有效地解决了数据稀疏性和新项目挑战。医生推荐:通过应用建议的药物推荐方法,医生可以开发一个药物推荐系统,该系统可以集成到在线医疗保健平台中。 然后,患者可以利用该系统对最适合其特定医疗条件的药物做出更明智的决定。这种个性化的药物推荐方法最终可以提高患者的满意度。对研究人员的推荐:整合患者的药物评论是研究人员提升建议的药物推荐方法的一种有前途的方式。通过利用患者评论,该方法可以更全面地了解某些药物对特定医疗条件的效果。此外,使用改进的聚合函数探索基于mc的评分之间的关系可以潜在地提高药物预测的准确性。这包括分析不同标准之间的关系,例如药物有效性、易用性和患者满意度,并根据患者反馈确定每个标准的最佳权重。结合患者评价和改进的聚合功能的更全面的方法可以使拟议的药物推荐方法为患者提供更个性化和更准确的建议。对社会的影响:为降低新冠肺炎大流行期间的感染风险,积极鼓励推广网上医疗服务。这使患者能够继续获得护理和接受治疗,同时遵守保持身体距离的准则,并在必要时采取屏蔽措施。因此,为患者提供个性化医疗服务预计将成为未来几年医疗保健领域的一股主要颠覆性力量。本研究提出了一种个性化的药物推荐方法,可以有效地解决这一问题,并帮助患者做出明智的决定,选择最适合他们特定医疗条件的药物。未来研究:一种可能增强建议的药物推荐方法是纳入患者药物评论。此外,使用改进的聚合函数对基于mc的评分进行分析也可能提高药物预测的准确性。 然后,患者可以利用该系统对最适合其特定医疗条件的药物做出更明智的决定。这种个性化的药物推荐方法最终可以提高患者的满意度。对研究人员的推荐:整合患者的药物评论是研究人员提升建议的药物推荐方法的一种有前途的方式。通过利用患者评论,该方法可以更全面地了解某些药物对特定医疗条件的效果。此外,使用改进的聚合函数探索基于mc的评分之间的关系可以潜在地提高药物预测的准确性。这包括分析不同标准之间的关系,例如药物有效性、易用性和患者满意度,并根据患者反馈确定每个标准的最佳权重。结合患者评价和改进的聚合功能的更全面的方法可以使拟议的药物推荐方法为患者提供更个性化和更准确的建议。对社会的影响:为降低新冠肺炎大流行期间的感染风险,积极鼓励推广网上医疗服务。这使患者能够继续获得护理和接受治疗,同时遵守保持身体距离的准则,并在必要时采取屏蔽措施。因此,为患者提供个性化医疗服务预计将成为未来几年医疗保健领域的一股主要颠覆性力量。本研究提出了一种个性化的药物推荐方法,可以有效地解决这一问题,并帮助患者做出明智的决定,选择最适合他们特定医疗条件的药物。未来研究:一种可能增强建议的药物推荐方法是纳入患者药物评论。此外,使用改进的聚合函数对基于mc的评分进行分析也可能提高药物预测的准确性。
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Medicine Recommender System Based on Semantic and Multi-Criteria Filtering
Aim/Purpose: This study aims to devise a personalized solution for online healthcare platforms that can alleviate problems arising from information overload and data sparsity by providing personalized healthcare services to patients. The primary focus of this paper is to develop an effective medicine recommendation approach for recommending suitable medications to patients based on their specific medical conditions. Background: With a growing number of people becoming more conscious about their health, there has been a notable increase in the use of online healthcare platforms and e-services as a means of diagnosis. As the internet continues to evolve, these platforms and e-services are expected to play an even more significant role in the future of healthcare. For instance, WebMD and similar platforms offer valuable tools and information to help manage patients’ health, such as searching for medicines based on their medical conditions. Nonetheless, patients often find it arduous and time-consuming to sort through all the available medications to find the ones that match their specific medical conditions. To address this problem, personalized recommender systems have emerged as a practical solution for mitigating the burden of information overload and data sparsity-related issues that are frequently encountered on online healthcare platforms. Methodology: The study utilized a dataset of MC ratings obtained from WebMD, a popular healthcare website. Patients on this website can rate medications based on three criteria, including medication effectiveness, ease of use, and satisfaction, using a scale of 1 to 5. The WebMD MC rating dataset used in this study contains a total of 32,054 ratings provided by 2,136 patients for 845 different medicines. The proposed HSMCCF approach consists of two primary modules: a semantic filtering module and a multi-criteria filtering module. The semantic filtering module is designed to address the issues of data sparsity and new item problems by utilizing a medicine taxonomy that sorts medicines according to medical conditions and makes use of semantic relationships between them. This module identifies the medicines that are most likely to be relevant to patients based on their current medical conditions. The multi-criteria filtering module, on the other hand, enhances the approach’s ability to capture the complexity of patient preferences by considering multiple criteria and preferences through a unique similarity metric that incorporates both distance and structural similarities. This module ensures that patients receive more accurate and personalized medication recommendations. Moreover, a medicine reputation score is employed to ensure that the approach remains effective even when dealing with limited ratings or new items. Overall, the combination of these modules makes the proposed approach more robust and effective in providing personalized medicine recommendations for patients. Contribution: This study addresses the medicine recommendation problem by proposing a novel approach called Hybrid Semantic-based Multi-Criteria Collaborative Filtering (HSMCCF). This approach effectively recommends medications for patients based on their medical conditions and is specifically designed to overcome issues related to data sparsity and new item recommendations that are commonly encountered on online healthcare platforms. The proposed approach addresses data sparsity and new item issues by incorporating a semantic filtering module and a multi-criteria filtering module. The semantic filtering module sorts medicines based on medical conditions and uses semantic relationships to identify relevant ones. The multi-criteria filtering module accurately captures patient preferences and provides precise recommendations using a novel similarity metric. Additionally, a medicine reputation score is also employed to further expand potential neighbors, improving predictive accuracy and coverage, particularly in sparse datasets or new items with few ratings. With the HSMCCF approach, patients can receive more personalized recommendations that are tailored to their unique medical needs and conditions. By leveraging a combination of semantic-based and multi-criteria filtering techniques, the proposed approach can effectively address the challenges associated with medicine recommendations on online healthcare platforms. Findings: The proposed HSMCCF approach demonstrated superior effectiveness compared to benchmark recommendation methods in multi-criteria rating datasets in terms of enhancing both prediction accuracy and coverage while effectively addressing data sparsity and new item challenges. Recommendations for Practitioners: By applying the proposed medicine recommendation approach, practitioners can develop a medicine recommendation system that can be integrated into online healthcare platforms. Patients can then utilize this system to make better-informed decisions regarding the medications that are most suitable for their specific medical conditions. This personalized approach to medication recommendations can ultimately lead to improved patient satisfaction. Recommendation for Researchers: Integrating patient medicine reviews is a promising way for researchers to elevate the proposed medicine recommendation approach. By leveraging patient reviews, the approach can gain a more comprehensive understanding of how certain medications perform for specific medical conditions. Additionally, exploring the relationship between MC-based ratings using an improved aggregation function can potentially enhance the accuracy of medication predictions. This involves analyzing the relationship between different criteria, such as medication effectiveness, ease of use, and satisfaction of the patients, and determining the optimal weighting for each criterion based on patient feedback. A more holistic approach that incorporates patient reviews and an improved aggregation function can enable the proposed medicine recommendation approach to provide more personalized and accurate recommendations to patients. Impact on Society: To mitigate the risk of infection during the COVID-19 pandemic, the promotion of online healthcare services was actively encouraged. This allowed patients to continue accessing care and receiving treatment while adhering to physical distancing guidelines and shielding measures where necessary. As a result, the implementation of personalized healthcare services for patients is expected to be a major disruptive force in healthcare in the coming years. This study proposes a personalized medicine recommendation approach that can effectively address this issue and aid patients in making informed decisions about the medications that are most suitable for their specific medical conditions. Future Research: One way that may enhance the proposed medicine recommendation approach is to incorporate patient medicine reviews. Furthermore, the analysis of MC-based ratings using an improved aggregation function can also potentially enhance the accuracy of medication predictions.
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来源期刊
CiteScore
2.30
自引率
0.00%
发文量
14
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