Department of Computer Engineering, Yazd Science and Research Branch, Islamic Azad University, Yazd, Iran.
Department of Computer Engineering, Maybod Branch, Islamic Azad University, Maybod, Iran.
Comput Math Methods Med. 2020 Oct 5;2020:1016284. doi: 10.1155/2020/1016284. eCollection 2020.
Gastric cancer (GC), one of the most common cancers around the world, is a multifactorial disease and there are many risk factors for this disease. Assessing the risk of GC is essential for choosing an appropriate healthcare strategy. There have been very few studies conducted on the development of risk assessment systems for GC. This study is aimed at providing a medical decision support system based on soft computing using fuzzy cognitive maps (FCMs) which will help healthcare professionals to decide on an appropriate individual healthcare strategy based on the risk level of the disease. FCMs are considered as one of the strongest artificial intelligence techniques for complex system modeling. In this system, an FCM based on Nonlinear Hebbian Learning (NHL) algorithm is used. The data used in this study are collected from the medical records of 560 patients referring to Imam Reza Hospital in Tabriz City. 27 effective features in gastric cancer were selected using the opinions of three experts. The prediction accuracy of the proposed method is 95.83%. The results show that the proposed method is more accurate than other decision-making algorithms, such as decision trees, Naïve Bayes, and ANN. From the perspective of healthcare professionals, the proposed medical decision support system is simple, comprehensive, and more effective than previous models for assessing the risk of GC and can help them to predict the risk factors for GC in the clinical setting.
胃癌(GC)是全球最常见的癌症之一,是一种多因素疾病,有许多因素会增加患该病的风险。评估患胃癌的风险对于选择适当的医疗保健策略至关重要。针对胃癌风险评估系统的开发,相关研究很少。本研究旨在提供一种基于软计算的医学决策支持系统,使用模糊认知图(FCMs),以帮助医疗保健专业人员根据疾病的风险水平,决定适当的个体化医疗保健策略。FCMs 被认为是用于复杂系统建模的最强有力的人工智能技术之一。在该系统中,使用基于非线性海伯学习(NHL)算法的 FCM。本研究使用了来自大不里士市伊玛目礼萨医院的 560 名患者的病历数据。通过三位专家的意见,选择了 27 个有效的胃癌特征。所提出方法的预测准确性为 95.83%。结果表明,与决策树、朴素贝叶斯和人工神经网络等其他决策算法相比,所提出的方法更为准确。从医疗保健专业人员的角度来看,所提出的医学决策支持系统简单、全面,比以前的 GC 风险评估模型更有效,可以帮助他们在临床环境中预测 GC 的风险因素。