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The Use of Low-Dose CT Intra- and Extra-Nodular Image Texture Features to Improve Small Lung Nodule Diagnosis in Lung Cancer Screening

机译:使用低剂量CT和结节内图像纹理特征,提高肺癌筛查小肺结核诊断

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-Standard computed tomography (CT) scan is performed on lung cancer patients for progression and lesion classification. However, low-dose CT (LDCT) is commonly used in lung cancer screening for high-risk people. Extensive studies have shown that computer-aided diagnosis (CAD) using standard CT could greatly improve the diagnostic accuracy of early lung cancer. Unlike standard CT imaging, the application of radiological texture features extracted by radiologists on LDCT imaging is not well established due to lower resolution and higher variations. The purpose of this study is to investigate possible diagnosis value of texture features by comparing the classification performance of radiologic reading with radiologic reading combined with computer-aided texture features. A total of 186 biopsy-confirmed control and lung cancer cases were obtained from the National Lung Screening Trial (NLST). Cases were matched by various clinical parameters including age, gender, smoking status, chronic obstructive pulmonary disease (COPD) status, body mass index (BMI) and image appearances. We compared the subjective diagnosis of benign/malignant with the consensus readings of three radiologists. We then developed a CAD framework that imports radiologic reading features and extracts CAD features for heterogeneity quantification and data analysis. A total of 1342 CAD features were extracted. After eliminating highly correlated and redundant features, the remaining 458 features were given to a random forest algorithm, and a predicted probability of malignancy score (Pm) was calculated. Patients were grouped into 140 training (70 biopsypositive for cancer and 70 negatives) and 46 testing (20 positives and 26 negatives) sets, and a threshold value over Pm (0.5) was then used to classify the test set into cancer and non-cancer. Clinical accuracy [sensitivity, specificity, positive predictive value (PPV), and negative predictive value (PV)] were [0.95, 0.88, 0.86, 0.96] and [0.70, 0.69, 0.64, 0.75] for the CAD and radiologic reading, respectively. The CAD framework incorporating the clinical reading with the texture features extracted from LDCT increased the PPV and reduced the false positive (FP) rate in the early diagnosis of lung cancer. This approach shows promise for improving the accuracy of lung cancer diagnosis in the clinical environment, especially in patients with well-established risk factors.
机译:- 标准的计算机断层扫描(CT)扫描是对肺癌患者进行进展和病变分类的。然而,低剂量CT(LDCT)通常用于肺癌筛查,用于高危人员。广泛的研究表明,使用标准CT的计算机辅助诊断(CAD)可以大大提高早期肺癌的诊断准确性。与标准CT成像不同,由于较低的分辨率和更高的变化,辐射学家中提取的放射科学家提取的放射纹理特征的应用。本研究的目的是通过比较放射学读数的放射学读数的分类性能与计算机辅助纹理特征相结合来研究纹理特征的可能诊断价值。从国家肺筛查试验(NLST)中获得了186名活检证实的对照和肺癌病例。病例与各种临床参数相匹配,包括年龄,性别,吸烟状态,慢性阻塞性肺病(COPD)状态,体重指数(BMI)和图像出现。我们将良性/恶性的主观诊断与三位放射科医生的共识读数进行了比较。然后,我们开发了一种进口放射学读取特征的CAD框架,提取CAD特征,以进行异质性量化和数据分析。共提取了1342个CAD特征。在消除高度相关性和冗余特征之后,剩余的458个特征被赋予随机林算法,并计算恶性评分(PM)的预测概率。将患者分为140次培训(癌症和70个否定的70个活检),46次测试(20个阳性和26个否定)组,然后使用PM(0.5)的阈值将试验分类为癌症和非癌症。临床精度[敏感性,特异性,阳性预测值(PPV)和负预测值(PV)]分别为CAD和放射学读数的[0.95,0.88,0.6,0.96]和[0.70,0.69,0.64,0.75] 。将临床阅读的CAD框架与LDCT提取的纹理特征增加了PPV并降低了肺癌早期诊断中的假阳性(FP)率。这种方法表明了提高临床环境中肺癌诊断的准确性,特别是在既定危险危险因素的患者中。

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