一种新的基于规则的双相情感障碍和重度抑郁症早期诊断专家系统

Q2 Health Professions
Mohammad Hossein Zolfagharnasab , Siavash Damari , Madjid Soltani , Artie Ng , Hengameh Karbalaeipour , Amin Haghdadi , Masood Hamed Saghayan , Farzam Matinfar
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引用次数: 0

摘要

自信而及时地诊断精神疾病是医生在开始治疗新病人时反复遇到的主要挑战之一。然而,诊断可能很快就会出现问题,因为受试者暴露了精神疾病之间的比较症状。重度抑郁症、躁狂性双相情感障碍、抑郁性双相情感障碍与症状轻微的普通个体之间的调整区分是社区卫生的重要课题之一。本研究通过提出一种新的基于规则的专家系统来回应所描述的问题,该系统评估障碍症状对涉及每种精神状态的确定性因素的影响。根据专家建议制定语义规则,并使用Prolog和c#语言进行实现。此外,一个易于使用的用户界面被认为是方便的系统工作流程。制定的框架的一致性是通过精神病专家进行严格测试以及从私人样本收集的120个临床样本来确定的。基于结果,目前的模型仅使用本体模型中指定的17种症状对精神障碍病例进行分类,成功率为93.33%。此外,测试后测量用户满意度的问卷也达到了3.56分(满分4分),这表明用户接受程度很高。因此,可以得出结论,目前的框架是在较短时间内实现可靠诊断的可靠工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel rule-based expert system for early diagnosis of bipolar and Major Depressive Disorder
A confident and timely diagnosis of mental illnesses is one of the primary challenges practitioners repeatedly encounter when they start treating new patients. However, diagnosing can quickly become problematic as the subjects expose comparative symptoms among mental illnesses. Due to influencing a broad populace among mental ailments, an adjusted differentiation between Major Depressive Disorder, Mania Bipolar Disorder, Depressive Bipolar Disorder, and ordinary individuals with mild symptoms is one of the critical subjects for community health. This study responded to the described problem by proposing a novel rule-based Expert System, which evaluates the impact of disorder symptoms on the Certainty Factor concerning each mental status. The semantic rules are developed based on the recommendation of experts, and the implementation is carried out using Prolog and C# languages. Furthermore, an easy-to-use user interface is considered to facilitate the system workflow. The consistency of the developed framework is established by performing rigorous tests by expert psychiatrists as well as 120 clinical samples collected from private samples. Based on the results, the current model classifies mental disorder cases with a success rate of 93.33% using only the 17 symptoms specified in the ontology model. Furthermore, a questionnaire that measures user satisfaction after the test also achieves a mean score of 3.56 out of 4, which indicates a high degree of user acceptance. As a result, it is concluded that the current framework is a reliable tool for achieving a solid diagnosis in a shorter period.
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来源期刊
Smart Health
Smart Health Computer Science-Computer Science Applications
CiteScore
6.50
自引率
0.00%
发文量
81
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