Computer Engineering Department, Technological Educational Institute of Central Greece, 3rd KM Old National Road Lamia-Athens, 35100 Lamia, Greece.
Computer Science Engineering, RVS College of Engineering and Technology, Coimbatore, India.
Comput Methods Programs Biomed. 2015 Nov;122(2):123-35. doi: 10.1016/j.cmpb.2015.07.003. Epub 2015 Jul 18.
Breast cancer is the most deadly disease affecting women and thus it is natural for women aged 40-49 years (who have a family history of breast cancer or other related cancers) to assess their personal risk for developing familial breast cancer (FBC). Besides, as each individual woman possesses different levels of risk of developing breast cancer depending on their family history, genetic predispositions and personal medical history, individualized care setting mechanism needs to be identified so that appropriate risk assessment, counseling, screening, and prevention options can be determined by the health care professionals. The presented work aims at developing a soft computing based medical decision support system using Fuzzy Cognitive Map (FCM) that assists health care professionals in deciding the individualized care setting mechanisms based on the FBC risk level of the given women. The FCM based FBC risk management system uses NHL to learn causal weights from 40 patient records and achieves a 95% diagnostic accuracy. The results obtained from the proposed model are in concurrence with the comprehensive risk evaluation tool based on Tyrer-Cuzick model for 38/40 patient cases (95%). Besides, the proposed model identifies high risk women by calculating higher accuracy of prediction than the standard Gail and NSAPB models. The testing accuracy of the proposed model using 10-fold cross validation technique outperforms other standard machine learning based inference engines as well as previous FCM-based risk prediction methods for BC.
乳腺癌是影响女性的最致命疾病,因此,40-49 岁的女性(有乳腺癌或其他相关癌症家族史)评估自身发生家族性乳腺癌(FBC)的个人风险是很自然的。此外,由于每个女性因家族史、遗传易感性和个人病史的不同,发生乳腺癌的风险水平也不同,因此需要确定个性化护理设置机制,以便医疗保健专业人员能够确定适当的风险评估、咨询、筛查和预防方案。本工作旨在开发一种基于软计算的医疗决策支持系统,使用模糊认知图(FCM),根据给定女性的 FBC 风险水平,帮助医疗保健专业人员决定个性化护理设置机制。基于 FCM 的 FBC 风险管理系统使用 NHL 从 40 个患者记录中学习因果权重,并达到 95%的诊断准确性。所提出模型的结果与基于 Tyrer-Cuzick 模型的综合风险评估工具一致,适用于 38/40 个患者案例(95%)。此外,该模型通过计算比标准 Gail 和 NSAPB 模型更高的预测准确性来识别高风险女性。使用 10 折交叉验证技术对提出的模型进行测试的准确性优于其他基于标准机器学习的推理引擎以及之前基于 FCM 的 BC 风险预测方法。