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基于超声图像的甲状腺良恶性结节分类的计算机辅助诊断:与放射科医生评估的比较。

Computer-aided diagnosis for classifying benign versus malignant thyroid nodules based on ultrasound images: A comparison with radiologist-based assessments.

作者信息

Chang Yongjun, Paul Anjan Kumar, Kim Namkug, Baek Jung Hwan, Choi Young Jun, Ha Eun Ju, Lee Kang Dae, Lee Hyoung Shin, Shin DaeSeock, Kim Nakyoung

机构信息

School of Electrical Engineering, Korea Advanced Institute of Science and Technology, 291, Daehak-ro, Yuseong-gu, Daejeon 34141, South Korea.

Funzin, Inc., 148 Ankuk-dong, Jongro-gu, Seoul 03060, South Korea.

出版信息

Med Phys. 2016 Jan;43(1):554. doi: 10.1118/1.4939060.

DOI:10.1118/1.4939060
PMID:26745948
Abstract

PURPOSE

To develop a semiautomated computer-aided diagnosis (cad) system for thyroid cancer using two-dimensional ultrasound images that can be used to yield a second opinion in the clinic to differentiate malignant and benign lesions.

METHODS

A total of 118 ultrasound images that included axial and longitudinal images from patients with biopsy-confirmed malignant (n = 30) and benign (n = 29) nodules were collected. Thyroid cad software was developed to extract quantitative features from these images based on thyroid nodule segmentation in which adaptive diffusion flow for active contours was used. Various features, including histogram, intensity differences, elliptical fit, gray-level co-occurrence matrixes, and gray-level run-length matrixes, were evaluated for each region imaged. Based on these imaging features, a support vector machine (SVM) classifier was used to differentiate benign and malignant nodules. Leave-one-out cross-validation with sequential forward feature selection was performed to evaluate the overall accuracy of this method. Additionally, analyses with contingency tables and receiver operating characteristic (ROC) curves were performed to compare the performance of cad with visual inspection by expert radiologists based on established gold standards.

RESULTS

Most univariate features for this proposed cad system attained accuracies that ranged from 78.0% to 83.1%. When optimal SVM parameters that were established using a grid search method with features that radiologists use for visual inspection were employed, the authors could attain rates of accuracy that ranged from 72.9% to 84.7%. Using leave-one-out cross-validation results in a multivariate analysis of various features, the highest accuracy achieved using the proposed cad system was 98.3%, whereas visual inspection by radiologists reached 94.9% accuracy. To obtain the highest accuracies, "axial ratio" and "max probability" in axial images were most frequently included in the optimal feature sets for the authors' proposed cad system, while "shape" and "calcification" in longitudinal images were most frequently included in the optimal feature sets for visual inspection by radiologists. The computed areas under curves in the ROC analysis were 0.986 and 0.979 for the proposed cad system and visual inspection by radiologists, respectively; no significant difference was detected between these groups.

CONCLUSIONS

The use of thyroid cad to differentiate malignant from benign lesions shows accuracy similar to that obtained via visual inspection by radiologists. Thyroid cad might be considered a viable way to generate a second opinion for radiologists in clinical practice.

摘要

目的

利用二维超声图像开发一种半自动计算机辅助诊断(CAD)系统,用于甲状腺癌诊断,该系统可在临床上提供辅助诊断意见,以鉴别恶性和良性病变。

方法

收集了118幅超声图像,包括经活检证实为恶性(n = 30)和良性(n = 29)结节患者的轴向和纵向图像。开发了甲状腺CAD软件,基于甲状腺结节分割从这些图像中提取定量特征,其中使用了主动轮廓的自适应扩散流。对每个成像区域评估了各种特征,包括直方图、强度差异、椭圆拟合、灰度共生矩阵和灰度游程长度矩阵。基于这些成像特征,使用支持向量机(SVM)分类器来区分良性和恶性结节。采用留一法交叉验证和顺序向前特征选择来评估该方法的总体准确性。此外,通过列联表分析和受试者操作特征(ROC)曲线分析,基于既定的金标准比较CAD与专家放射科医生视觉检查的性能。

结果

该提议的CAD系统的大多数单变量特征的准确率在78.0%至83.1%之间。当使用网格搜索方法确定的最佳SVM参数以及放射科医生用于视觉检查的特征时,作者能够达到72.9%至84.7%的准确率。在对各种特征的多变量分析中使用留一法交叉验证结果,提议的CAD系统实现的最高准确率为98.3%,而放射科医生的视觉检查准确率达到94.9%。为了获得最高准确率,轴向图像中的“纵横比”和“最大概率”最常包含在作者提议的CAD系统的最佳特征集中,而纵向图像中的“形状”和“钙化”最常包含在放射科医生视觉检查的最佳特征集中。在ROC分析中,提议的CAD系统和放射科医生视觉检查的曲线下计算面积分别为0.986和0.979;两组之间未检测到显著差异。

结论

使用甲状腺CAD鉴别恶性和良性病变的准确性与放射科医生的视觉检查相似。在临床实践中,甲状腺CAD可能被认为是为放射科医生提供辅助诊断意见的一种可行方法。

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