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Extracting Fuzzy Classification Rules from Texture Segmented HRCT Lung Images

机译:从纹理分割的HRCT肺图像中提取模糊分类规则

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摘要

Automatic tools for detection and identification of lung and lesion from high-resolution CT (HRCT) are becoming increasingly important both for diagnosis and for delivering high-precision radiation therapy. However, development of robust and interpretable classifiers still presents a challenge especially in case of non-small cell lung carcinoma (NSCLC) patients. In this paper, we have attempted to devise such a classifier by extracting fuzzy rules from texture segmented regions from HRCT images of NSCLC patients. A fuzzy inference system (FIS) has been constructed starting from a feature extraction procedure applied on overlapping regions from the same organs and deriving simple if–then rules so that more linguistically interpretable decisions can be implemented. The proposed method has been tested on 138 regions extracted from CT scan images acquired from patients with lung cancer. Assuming two classes of tissues C1 (healthy tissues) and C2 (lesion) as negative and positive, respectively; preliminary results report an AUC = 0.98 for lesions and AUC = 0.93 for healthy tissue, with an optimal operating condition related to sensitivity = 0.96, and specificity = 0.98 for lesions and sensitivity 0.99, and specificity = 0.94 for healthy tissue. Finally, the following results have been obtained: false-negative rate (FNR) = 6 % (C1), FNR = 2 % (C2), false-positive rate (FPR) = 4 % (C1), FPR = 3 % (C2), true-positive rate (TPR) = 94 %, (C1) and TPR = 98 % (C2).
机译:从高分辨率CT(HRCT)来检测和识别肺部和病变的自动工具对于诊断和提供高精度放射治疗都变得越来越重要。然而,特别是在非小细胞肺癌(NSCLC)患者的情况下,开发鲁棒且可解释的分类器仍然是一个挑战。在本文中,我们尝试通过从NSCLC患者的HRCT图像的纹理分割区域提取模糊规则来设计这样的分类器。建立了一个模糊推理系统(FIS),该算法从对相同器官的重叠区域应用特征提取过程开始,并推导出简单的if-then规则,以便可以执行更多可语言解释的决策。已对从肺癌患者的CT扫描图像中提取的138个区域进行了测试。假设两类组织C1(健康组织)和C2(病变)分别为阴性和阳性;初步结果表明,病变的AUC an = 0.98,健康组织的AUC = 0.93,最佳操作条件与敏感性= 0.96,特异性,= 0.98,病变和敏感性lesions0.99,健康,特异性= 0.94有关。最后获得以下结果:假阴性率(FNR)= 6%(C1),FNR = 2%(C2),假阳性率(FPR)= 4%(C1),FPR = 3%( C2),真阳性率(TPR)= 94%(C1)和TPR = 98%(C2)。

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