Texture and shape analysis of diffusion‐weighted imaging for thyroid nodules classification using machine learning

甲状腺结节 人工智能 峰度 医学影像学 磁共振成像 直方图 模式识别(心理学) 计算机科学 磁共振弥散成像 有效扩散系数 放射科 核医学 医学 甲状腺 数学 统计 图像(数学) 内科学
作者
Ahmed Sharafeldeen,Mohamed Elsharkawy,Reem Khaled,Ahmed Shaffie,Fahmi Khalifa,Ahmed Soliman,Ahmed Abdel Khalek Abdel Razek,Manar Hussein,Saher Taman,Ahmed M. Naglah,Mohammed Alrahmawy,Samir Elmougy,Jawad Yousaf,Mohammed Ghazal,Ayman El‐Baz
出处
期刊:Medical Physics [Wiley]
卷期号:49 (2): 988-999 被引量:32
标识
DOI:10.1002/mp.15399
摘要

Abstract Purpose To assess whether the integration between (a) functional imaging features that will be extracted from diffusion‐weighted imaging (DWI); and (b) shape and texture imaging features as well as volumetric features that will be extracted from T2‐weighted magnetic resonance imaging (MRI) can noninvasively improve the diagnostic accuracy of thyroid nodules classification. Patients and methods In a retrospective study of 55 patients with pathologically proven thyroid nodules, T2‐weighted and diffusion‐weighted MRI scans of the thyroid gland were acquired. Spatial maps of the apparent diffusion coefficient (ADC) were reconstructed in all cases. To quantify the nodules' morphology, we used spherical harmonics as a new parametric shape descriptor to describe the complexity of the thyroid nodules in addition to traditional volumetric descriptors (e.g., tumor volume and cuboidal volume). To capture the inhomogeneity of the texture of the thyroid nodules, we used the histogram‐based statistics (e.g., kurtosis, entropy, skewness, etc.) of the T2‐weighted signal. To achieve the main goal of this paper, a fusion system using an artificial neural network (NN) is proposed to integrate both the functional imaging features (ADC) with the structural morphology and texture features. This framework has been tested on 55 patients (20 patients with malignant nodules and 35 patients with benign nodules), using leave‐one‐subject‐out (LOSO) for training/testing validation tests. Results The functionality, morphology, and texture imaging features were estimated for 55 patients. The accuracy of the computer‐aided diagnosis (CAD) system steadily improved as we integrate the proposed imaging features. The fusion system combining all biomarkers achieved a sensitivity , specificity , positive predictive value , negative predictive value , F1‐score , and accuracy of (confidence interval [CI]: ), (CI: ), (CI: ), (CI: ), (CI: ), and (CI: ), respectively, using the LOSO cross‐validation approach. Conclusion The results demonstrated in this paper show the promise that integrating the functional features with morphology as well as texture features by using the current state‐of‐the‐art machine learning approaches will be extremely useful for identifying thyroid nodules as well as diagnosing their malignancy.
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