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Disease Symptom Analysis Based Department Selection Using Machine Learning for Medical Treatment

机译:基于机器学习的疾病症状分析科室选择

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Most of the patients today who face health problems, initially take advice from unprofessional or people with no knowledge that makes them more vulnerable. In many occasions, doctors also get confused with identifying actual disease. This might happen as they usually identify disease based on their limited experience. Moreover, general patient selects doctor according to their will and with no knowledge about the disease that may need specialist doctor. But some disease cannot be confirmed without a specialized doctor. Therefore, this paper proposes a Machine Learning based disease symptom analysis technique for assisting the patients seeking proper treatment by selecting accurate medical department using the symptom that they can easily recognize. Proposed framework will use machine learning technique to select a medical department based on the joint consideration of various disease symptoms of the patient. We investigate our proposed framework by using 9 different supervised machine learning techniques. Performance of framework for identifying appropriate medical department under the machine learning techniques is thoroughly investigated and compared. This framework can be used for telemedicine platform or in automated hospital management sector. This may create a path of enormous development in health care sector.
机译:如今,大多数面临健康问题的患者最初都是从非专业人士或没有使他们变得更脆弱的知识的人那里获得建议。在许多情况下,医生也对确定实际疾病感到困惑。这可能是因为他们通常基于有限的经验来识别疾病。此外,普通患者会根据自己的意愿选择医生,并且对可能需要专科医生的疾病一无所知。但是,如果没有专职医生,则无法确认某些疾病。因此,本文提出了一种基于机器学习的疾病症状分析技术,该技术可通过使用容易识别的症状选择准确的医疗部门来协助寻求适当治疗的患者。拟议的框架将使用机器学习技术,基于对患者各种疾病症状的共同考虑来选择医疗部门。我们通过使用9种不同的监督式机器学习技术来研究我们提出的框架。彻底研究并比较了在机器学习技术下确定合适的医疗部门的框架的性能。该框架可用于远程医疗平台或自动化医院管理部门。这可能会为卫生保健部门创造巨大的发展之路。

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