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Entropy based integrated diagnosis for enhanced accuracy and removal of variability in clinical inferences

机译:基于熵的集成诊断可提高准确性并消除临床推断中的变异性

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Background: Medical imaging is a thrust area in clinical diagnosis for internal tissue/cell abnormalities like growth of a tumor. Statistical analysis of these images has enables the use of intelligent virtual vision to eradicate the natural limitation of human vision in terms of 2-dimensional representation only. This, sometimes, leads to variability in diagnosis between classical rule based and statistical diagnosis. Objectives: In this paper, we propose to utilize the concept of entropy calculation for more accurate clinical inferences. Methods: The classical and statistical diagnosis is first represented through a probabilistic data set which is then infused to obtain integrated diagnosis. Relative entropies of these integrated diagnostic results with original classical and statistical results are calculated to make final decision on clinical stage of disease. Results and Conclusions: The proposed technique enhances accuracy of diagnosis towards current stage of disease through medical imaging by eliminating variability in inferences drawn through different approaches or different clinical experts. The approach has been verified through preliminary testing on ultrasound images taken for abnormal tissue growth resulting in a tumor.
机译:背景:医学成像是临床诊断中内部组织/细胞异常(如肿瘤生长)的重点领域。这些图像的统计分析使得能够使用智能虚拟视觉来消除仅基于二维表示的人类视觉的自然局限性。有时,这会导致基于经典规则的诊断与统计诊断之间的诊断差异。目的:在本文中,我们建议利用熵计算的概念进行更准确的临床推断。方法:经典和统计诊断首先通过概率数据集表示,然后将其注入以获得综合诊断。计算这些综合诊断结果与原始经典和统计结果的相对熵,以最终决定疾病的临床阶段。结果与结论:所提出的技术通过消除通过不同方法或不同临床专家得出的推论的可变性,通过医学成像提高了对疾病当前阶段的诊断准确性。该方法已通过对超声图像的初步测试进行了验证,该超声图像用于检测导致肿瘤的异常组织生长。

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