融合在内镜诊断中的决策支持

M. Zheng, S. Krishnan
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引用次数: 8

摘要

在内窥镜图像分析中,有许多有效的方法来检测图像的异常。然而,没有一种单独的技术适合于检测任何图像中的任何疾病模式。本文旨在发展一种融合方法,将多种技术结合起来,帮助医生获得准确的诊断。该方法采用了基于贝叶斯推理的多传感器数据融合技术。该组合基于概率论,采用非线性组合。在融合过程之前,使用基于知识的技术对子决策进行评估。以前做过的类似处理的内窥镜病例自动从病例库中选择,并寻求专家医师经验进行监督评估。同时,在融合过程中引入机器学习技术,提高决策的准确性。评估后得到的新案例作为学习数据反馈到融合过程中。建议的决策支持方法已经发展。初步结果令人鼓舞,为该方法的可行性提供了支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Decision support by fusion in endoscopic diagnosis
In endoscopic image analysis, there are many effective methods to detect the abnormality of an image. However, no individual technique is suitable for detection of any disease pattern in any image. This paper aims to develop a fusion approach to combine multiple techniques to help the physician obtain an accurate diagnosis. Multisensor data fusion technique based on Bayesian Inference is applied in the proposed approach. The combination is based on probability theory and employed nonlinear combination. Before the fusion process, a knowledge-based technique is used for the evaluation of sub-decisions. Similar processed endoscopic case done previously is automatically selected from a case repository and expert physician experience is sought for the supervised evaluation. Meantime, a machine-learning technique is incorporated in the fusion process to increase the accuracy of the decision-making. The new case obtained after the evaluation is fed back as learning data to the fusion process. The proposed decision support approach has been developed. The preliminary results are encouraging and lead support to the feasibility of the method.
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