论文标题
疾病预测的一般DEEPLCP模型:肺癌病例
General DeepLCP model for disease prediction : Case of Lung Cancer
论文作者
论文摘要
根据GHO(全球健康天文台(GHO),多种疾病的高流行率,例如缺血性心脏病,中风,肺癌疾病和下呼吸道感染,在过去的十年中仍然是最高的杀手。 这些疾病引起的死亡人数的增长是由于症状的延迟进行了延迟。由于在早期阶段,症状与良性疾病(例如流感)的症状微不足道,并且相似,我们只能在晚期疾病中检测到该疾病。 此外,对健康,遗传因素和压力大的生活条件有害的不当实践的高频率可能会提高死亡率。 许多研究都处理了这些致命疾病,其中大多数应用于机器学习模型来处理图像诊断。但是,缺点是,图像许可仅在非常延迟的阶段检测疾病,然后几乎无法保存患者。 在本文中,我们介绍了我们的新方法“ DeepLCP”,以预测威胁人们生命的致命疾病。它主要基于相关(或未经测试的人)的原始和异质数据。自然语言处理(NLP)和深度学习范式组合组合的“ DEEPLCP”结果。在肺癌预测的情况下,该模型的实验结果批准了疾病预测验证期间高精度和低损失数据率。
According to GHO (Global Health Observatory (GHO), the high prevalence of a large variety of diseases such as Ischaemic heart disease, stroke, lung cancer disease and lower respiratory infections have remained the top killers during the past decade. The growth in the number of mortalities caused by these disease is due to the very delayed symptoms'detection. Since in the early stages, the symptoms are insignificant and similar to those of benign diseases (e.g. the flu ), and we can only detect the disease at an advanced stage. In addition, The high frequency of improper practices that are harmful to health, the hereditary factors, and the stressful living conditions can increase the death rates. Many researches dealt with these fatal disease, and most of them applied advantage machine learning models to deal with image diagnosis. However the drawback is that imagery permit only to detect disease at a very delayed stage and then patient can hardly be saved. In this Paper we present our new approach "DeepLCP" to predict fatal diseases that threaten people's lives. It's mainly based on raw and heterogeneous data of the concerned (or under-tested) person. "DeepLCP" results of a combination combination of the Natural Language Processing (NLP) and the deep learning paradigm.The experimental results of the proposed model in the case of Lung cancer prediction have approved high accuracy and a low loss data rate during the validation of the disease prediction.