Medical Checkup and Image Data Analysis for Preventing Life Style Diseases: A Research Survey of Japan Society for the Promotion of Science with Grant-in-Aid for Scientific Research (A) (Grant number 25240038)

M. Nii, M. Morimoto, Syoji Kobashi, N. Kamiura, Y. Hata, Ken-ichi Sorachi
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引用次数: 3

Abstract

To prevent lifestyle diseases, this paper studies disease prediction using periodical health checkup data, daily monitoring to maintain healthy condition, and early life disease detection with medical imaging. To analyse periodical health checkup data, three approaches are introduced. The first approach is based on fuzzy set. It converts all attributes of health checkup data into fuzzy degrees by defining fuzzy membership functions. It enables us to manipulate all attributes in the same scale. The second approach analyses relationships between attributes of specific health examination data to cope with lifestyle diseases. It uses self-organizing maps, and clarifies the relationships among hemoglobin A1c (HbA1c), glutamic-oxaloacetic transaminase, glutamic-pyruvic transaminase, gamma-glutamyl transpeptidase, and triglyceride. The third approach predicts HbA1c fluctuations using decision tree. If we can predict the fluctuation, we can extract knowledge about what element will trigger developing diabetes. Through our examination, BMI will be the largest influencer about HbA1c fluctuations. Daily understanding of own condition is the first step of maintaining our health. A MEMS-based small and flexible monitoring device has been developed by the ERATO Maenaka human-sensing fusion project. We propose a condition estimation method using the monitoring device and FNN-based condition estimation. Experimental results show that it is a promising method for condition understanding. Cerebral vascular disease is one of major lifestyle diseases, and is caused by cerebral aneurysms. To predict the diseases, we should analyse cerebral arteries and aneurysms using magnetic resonance angiography images. This paper introduces an automated analysis method for early detection of aneurysms.
预防生活方式疾病的医疗检查和图像数据分析:日本科学研究资助促进会的研究调查(A)(资助号25240038)
为了预防生活方式疾病,本文研究了利用定期健康检查数据进行疾病预测、日常监测保持健康状态、利用医学影像进行生命早期疾病检测。介绍了三种分析定期体检数据的方法。第一种方法基于模糊集。通过定义模糊隶属函数,将健康体检数据的所有属性转换为模糊度。它使我们能够以相同的尺度操作所有属性。第二种方法分析特定健康检查数据属性之间的关系,以应对生活方式疾病。它使用自组织图,阐明了血红蛋白A1c (HbA1c)、谷草转氨酶、谷丙转氨酶、γ -谷氨酰转肽酶和甘油三酯之间的关系。第三种方法使用决策树预测HbA1c波动。如果我们能预测这种波动,我们就能了解什么因素会引发糖尿病。通过我们的研究,BMI将是影响HbA1c波动的最大因素。每天了解自己的状况是保持健康的第一步。ERATO Maenaka人类传感融合项目开发了一种基于mems的小型灵活监测装置。提出了一种利用监测装置和基于fnn的状态估计方法。实验结果表明,这是一种很有前途的条件理解方法。脑血管病是主要的生活方式疾病之一,由脑动脉瘤引起。为了预测疾病,我们应该利用磁共振血管造影图像分析脑动脉和动脉瘤。本文介绍了一种早期发现动脉瘤的自动分析方法。
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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