SchizoBot: Delivering Cognitive Behavioural Therapy for Augmented Management of Schizophrenia

Ephraim O Nwoye, Abdulgafaar A Muslehat, C. Umeh, Samuel O Okodeh, Wai Lok Woo
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Abstract

According to WHO, about 1.86 million people in Nigeria and about 24 million people worldwide are living with schizophrenia, having symptoms varying from hallucination to delusion, and distorted speech and thinking. Schizophrenia is a life-long disorder with no cure and thus, patients need continuous management with medications and psychotherapy. However, due to various factors such as the cost of therapy, time consumption, lack of adequate health workers, the unwillingness of patients to engage, and the pandemic, there is a need for an effective alternate medium for providing cognitive behavioural therapy (CBT) to schizophrenia patients. This research aims to develop a chatbot, which is called SchizoBot, delivering CBT for augmented management of schizophrenia. CBT for schizophrenia details, along with FAQs of schizophrenia patients were collected and adopted into a conversational format for pre-processing and model development. The model was developed with artificial neural network (ANN) and trained with the dataset which was split into train-test data to optimize the performance of the model. The result of the ANN showed an accuracy score of 93.97% at 60:40 train-test data split with 200 epochs. This robust system which provides an optimized chatbot platform using ANN as the model classifier for CBT delivery is foreseen to be a windfall to clinicians and patients as an augmentative management tool for schizophrenia. This, therefore, is a relatively low-cost and easily accessible means to significantly improve the health of schizophrenia patients while assisting clinicians in therapy delivery and compensating for the lapses in the administration of CBT to schizophrenia patients.
SchizoBot:提供认知行为疗法,增强对精神分裂症的管理
据世界卫生组织统计,尼日利亚约有 186 万人患有精神分裂症,全世界约有 2 400 万人患有精神分裂症,其症状从幻觉到妄想不一而足,语言和思维扭曲。精神分裂症是一种终生无法治愈的疾病,因此患者需要持续接受药物治疗和心理治疗。然而,由于治疗费用高昂、耗时长、缺乏足够的医护人员、患者不愿接受治疗以及疾病流行等各种因素,需要一种有效的替代媒介为精神分裂症患者提供认知行为疗法(CBT)。本研究旨在开发一款名为 SchizoBot 的聊天机器人,为精神分裂症患者提供 CBT 增强管理。研究人员收集了精神分裂症的 CBT 详情以及精神分裂症患者的常见问题,并将其转化为对话格式,用于预处理和模型开发。模型采用人工神经网络(ANN)开发,并使用数据集进行训练,数据集分为训练-测试数据,以优化模型的性能。人工神经网络的结果显示,在 60:40 的训练-测试数据分割和 200 个历时的情况下,准确率为 93.97%。这一稳健的系统提供了一个优化的聊天机器人平台,使用方差分析网络(ANN)作为模型分类器来提供 CBT,预计将成为临床医生和患者的福音,成为精神分裂症的辅助管理工具。因此,这是一种成本相对较低、易于获取的手段,可显著改善精神分裂症患者的健康状况,同时协助临床医生提供治疗,弥补精神分裂症患者 CBT 治疗过程中的不足。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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