Ultrasound in Medicine and Biology
Volume 35, Issue 2 , Pages 201-208, February 2009

Characterization of the Major Histopathological Components of Thyroid Nodules Using Sonographic Textural Features for Clinical Diagnosis and Management

  • Shao-Jer Chen

      Affiliations

    • Department of Radiology, Buddhist Dalin Tzu Chi General Hospital, Chia-Yi, Taiwan
    • School of Medicine, Buddhist Tzu Chi University, Hualien, Taiwan
  • ,
  • Sung-Nien Yu

      Affiliations

    • Department of Electrical Engineering, National Chung Cheng University, Chia-Yi, Taiwan
  • ,
  • Jeh-En Tzeng

      Affiliations

    • Department of Pathology, Buddhist Dalin Tzu Chi General Hospital, Chia-Yi, Taiwan
  • ,
  • Yen-Ting Chen

      Affiliations

    • Department of Electrical Engineering, Southern Taiwan University, Tainan, Taiwan
  • ,
  • Ku-Yaw Chang

      Affiliations

    • Department of Computer Science and Information Engineering, Da-Yeh University, Changhua, Taiwan
  • ,
  • Kuo-Sheng Cheng

      Affiliations

    • Institute of Biomedical Engineering, National Cheng Kung University, Tainan, Taiwan, Department of Information Engineering, Kun Shan University, Tainan County, TAIWAN, ROC
  • ,
  • Fu-Tsung Hsiao

      Affiliations

    • Department of Radiology, Buddhist Dalin Tzu Chi General Hospital, Chia-Yi, Taiwan
  • ,
  • Chang-Kuo Wei

      Affiliations

    • Department of Endocrine Surgery, Buddhist Dalin Tzu Chi General Hospital, Chia-Yi, Taiwan
    • Corresponding Author InformationAddress correspondence to: Chang-Kuo Wei, MD, Department of Endocrine Surgery, Buddhist Dalin Tzu Chi General Hospital, Chia-Yi, Taiwan

Received 18 May 2008; received in revised form 31 July 2008; accepted 21 August 2008. published online 17 November 2008.

Abstract 

In this study, the characteristic sonographic textural feature that represents the major histopathologic components of the thyroid nodules was objectively quantified to facilitate clinical diagnosis and management. A total of 157 regions-of-interest thyroid ultrasound image was recruited in the study. The sonographic system used was the GE LOGIQ 700), (General Electric Healthcare, Chalfant St. Giles, UK). 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, ReliefF was used as a feature selector. Among the various textural features, the sum average value derived from co-occurrence matrix can well reflect echogenicity and can effectively differentiate between follicles and fibrosis base thyroid nodules. Fibrosis shows lowest echogenicity and lowest difference sum average value. Enlarged follicles show highest echogenicity and difference sum average values. Papillary cancer or follicular tumors show the difference sum average values and echogenicity between. The rule of thumb for the echogenicity is that the more follicles are mixed in, the higher the echo of the follicular tumor and papillary cancer will be and vice versa for fibrosis mixed. Areas with intermediate and lower echo should address the possibility of follicular or papillary neoplasm mixed with either follicles or fibrosis. These areas provide more cellular information for ultrasound guided aspiration (E-mail: a120930@tzuchi.com.tw)

Key Words: Thyroid nodule, Sonographic image, Textural analysis, Histopathological components, Tissue characterization

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PII: S0301-5629(08)00389-X

doi:10.1016/j.ultrasmedbio.2008.08.017

Ultrasound in Medicine and Biology
Volume 35, Issue 2 , Pages 201-208, February 2009