Classification of the Thyroid Nodules Based on Characteristic Sonographic Textural Feature and Correlated Histopathology Using Hierarchical Support Vector Machines

التفاصيل البيبلوغرافية
العنوان: Classification of the Thyroid Nodules Based on Characteristic Sonographic Textural Feature and Correlated Histopathology Using Hierarchical Support Vector Machines
المؤلفون: Chih Wen Lin, Chang-Kuo Wei, Jeh-En Tzeng, Wen-Ching Hsu, Chuan-Yu Chang, Yen-Ting Chen, Ku-Yaw Chang, Shao-Jer Chen
المصدر: Ultrasound in Medicine & Biology. 36:2018-2026
بيانات النشر: Elsevier BV, 2010.
سنة النشر: 2010
مصطلحات موضوعية: Adult, Male, Thyroid nodules, medicine.medical_specialty, Pathology, Cell type, Acoustics and Ultrasonics, Biophysics, Sensitivity and Specificity, Young Adult, Fibrosis, medicine, Humans, Radiology, Nuclear Medicine and imaging, Thyroid Neoplasms, Thyroid Nodule, Aged, Ultrasonography, Aged, 80 and over, Radiological and Ultrasound Technology, business.industry, Ultrasound, Anatomical pathology, Middle Aged, medicine.disease, Support vector machine, Cancer cell, Female, Histopathology, Radiology, business
الوصف: In this study, the ultrasound images of thyroid nodules were classified to facilitate clinical diagnosis and management. The hierarchical support vector machines (SVM) classification system was used to select the characteristic sonographic textural feature that represents the major histopathologic components of the thyroid nodules. Two ultrasound systems (LA39 and i12L mentioned in the Materials and Methods section) were used for comparison. Seventy-six thyroid nodular lesions and 157 regions-of-interest thyroid ultrasound image from each system were recruited in the study. The parameters affecting image acquisition were kept in the same condition for all lesions. Commonly used texture analysis methods were applied to characterize thyroid ultrasound images. Image features were classified according to the corresponding pathologic findings. To estimate their relevance and performance to classification, SVMs were used as a feature selector and a classifier. The thyroid nodules are first categorized as two main types, i.e., follicle base and fibrosis base nodule, by sum average. The follicle base nodules can be further and completely classified into follicles with few cells, follicles with follicular cells and follicles with papillary cancer cells by run length nonuniformity (RLNU). The fibrosis base nodules are further classified by sum square into fibrosis with few cells and fibrosis with dominant cells. The fibrosis base neoplasm with dominant cells can be separated into fibrosis with follicular cells and fibrosis with papillary cancer cells by entropy. The hierarchical SVM classification system achieves a diagnostic accuracy between 96.34% and 100%. Besides, the best sonographic textural feature can be selected by the system for the differentiation between the follicle and fibrosis base thyroid nodules or the cell types mixed in them. In follicle base thyroid nodules, papillary cancers show higher sonographic textural RLNU but less than follicular cells. In fibrosis base thyroid nodules, papillary cancers show increased sonographic textural variance and entropy.
تدمد: 0301-5629
URL الوصول: https://explore.openaire.eu/search/publication?articleId=doi_dedup___::dc8fa0bccabc3f4655e8e5d71d8535f7
https://doi.org/10.1016/j.ultrasmedbio.2010.08.019
حقوق: CLOSED
رقم الأكسشن: edsair.doi.dedup.....dc8fa0bccabc3f4655e8e5d71d8535f7
قاعدة البيانات: OpenAIRE