Academic Radiology
Volume 13, Issue 6 , Pages 713-720, June 2006

Diagnosis of Hepatic Tumors With Texture Analysis in Nonenhanced Computed Tomography Images1

  • Yu-Len Huang, PhD

      Affiliations

    • Department of Computer Science & Information Engineering, Tunghai University, Taichung 407, Taiwan
    • Corresponding Author InformationAddress correspondence to Y.-L.H.
  • ,
  • Jeon-Hor Chen, MD

      Affiliations

    • Department of Radiology, China Medical University Hospital, No. 2, Yuh-Der Road, Taichung 404, Taiwan.
  • ,
  • Wu-Chung Shen, MD

      Affiliations

    • Department of Radiology, China Medical University Hospital, No. 2, Yuh-Der Road, Taichung 404, Taiwan.

Received 10 July 2005; received in revised form 10 July 2005; accepted 11 July 2005.

Rationale and Objectives

Computed tomography (CT) after iodinated contrast agent injection is highly accurate for diagnosis of hepatic tumors. However, iodinating may have problems of renal toxicity and allergic reaction. We aimed to evaluate the potential role of the computer-aided diagnosis (CAD) with texture analysis in the differential of hepatic tumors on nonenhanced CT.

Materials and Methods

This study evaluated 164 liver lesions (80 malignant tumors and 84 hemangiomas). The suspicious tumor region in the digitized CT image was manually selected and extracted as a circular subimage. Proposed preprocessing adjustments for subimages were used to equalize the information needed for a differential diagnosis. The autocovariance texture features of subimage were extracted and a support vector machine classifier identified the tumor as benign or malignant.

Results

The accuracy of the proposed diagnosis system for classifying malignancies is 81.7%, the sensitivity is 75.0%, the specificity is 88.1%, the positive predictive value is 85.7%, and the negative predictive value is 78.7%.

Conclusions

This system differentiates benign from malignant hepatic tumors with relative high accuracy and is therefore clinically useful to reduce patients needed for iodinated contrast agent injection in CT examination. Because the support vector machine is trainable, it could be further optimized if a larger set of tumor images is to be supplied.

Keywords:  Hepatic tumor , liver lesion , computed tomography , computer-aided diagnosis , support vector machine , texture analysis

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1 This work was supported by the National Science Council, Taiwan, Republic of China, under grants NSC-89-2314-B-039-020-M08 and NSC-92-2213-E-029-022.

PII: S1076-6332(06)00217-0

doi:10.1016/j.acra.2005.07.014

Academic Radiology
Volume 13, Issue 6 , Pages 713-720, June 2006