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A multi-modal approach to predict the strength of doctor-patient relationships

机译:一种预测医患关系的多模态方法

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Advances in healthcare social media and information about the doctor-patient (D-P) communication regarding the prior patients' treatment experience, can positively influence the D-P relationship. In pace with prior patients' photo-sharing on healthcare social media websites from personal computers and smartphones regarding their treatment experience, the amount of multi-modal content has been growing exponentially. Therefore, there is an increasing need for coping with such information to mine useful knowledge about the D-P communication. Scraping 68,610 reviews, including 4618 photos from a popular physician-rating site,, this study proposes a novel, real-time, multi-modal classification framework, which uses textual and visual modalities as a source of information. Furthermore, this work suggests a social media image filtering mechanism that filters duplicate and irrelevant information from the data. Results show that the data filtering enhances the information reliability, whereas the addition of novel text and visual feature sets improves the classification accuracy up to 16.94%. In addition, fusing textual and visual features enhance the performance of the classifier by 18.24%, which produces better results than considering them separately. The findings also revealed that deep learning algorithms outperformed the classical machine learning algorithms across the entire novel features model, indicating the usefulness and suitability of the proposed methodology. Lastly, the findings from extensive experiments on the physicians' reviews dataset will guide the doctors to demonstrate the implication of the proposed system for improving the D-P relationship.
机译:医疗保健社交媒体和关于患者患者(D-P)通信的信息的进展,关于先前患者的治疗经验,可以积极影响D-P关系。通过与先前患者的照片共享在医疗保健社交媒体网站上,从个人计算机和智能手机上有关其治疗经验,多模态内容的数量呈指数增长。因此,越来越需要应对这些信息,以挖掘关于D-P通信的有用知识。刮68,610条评论,包括一个受欢迎的医生评级网站4618张照片,这项研究提出了一种新颖,实时,多模态分类框架,它使用文本和视觉方式作为信息来源。此外,这项工作表明,社交媒体图像过滤机制,其从数据中过滤复制和无关信息。结果表明,数据过滤增强了信息可靠性,而新颖的文本和视觉特征集增加了高达16.94%的分类准确性。此外,融合文本和视觉功能将分类器的性能提高18.24%,产生比单独考虑它们的更好结果。调查结果还透露,深度学习算法在整个新颖功能模型上表现出古典机器学习算法,表明所提出的方法的用处理和适用性。最后,对医生审查数据集的广泛实验的调查结果将指导医生展示所提出的系统改善D-P关系的含义。

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