An improved quantitative measurement for thyroid cancer detection based on elastography |
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Authors: | Ding Jianrui Cheng H D Huang Jianhua Zhang Yingtao Liu Jiafeng |
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Affiliation: | School of Computer Science and Technology, Harbin Institute of Technology, Harbin 150001, PR China. jrding@hit.edu.cn |
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Abstract: | ObjectiveTo evaluate color thyroid elastograms quantitatively and objectively.Materials and methods125 cases (56 malignant and 69 benign) were collected with the HITACHI Vision 900 system (Hitachi Medical System, Tokyo, Japan) and a liner-array-transducer of 6–13 MHz. Standard of reference was cytology (FNA—fine needle aspiration) or histology (core biopsy). The original color thyroid elastograms were transferred from red, green, blue (RGB) color space to hue, saturation, value (HSV) color space. Then, hard area ratio was defined. Finally, a SVM classifier was used to classify thyroid nodules into benign and malignant. The relation between the performance and hard threshold was fully investigated and studied.ResultsThe classification accuracy changed with the hard threshold, and reached maximum (95.2%) at some values (from 144 to 152). It was higher than strain ratio (87.2%) and color score (83.2%). It was also higher than the one of our previous study (93.6%).ConclusionThe hard area ratio is an important feature of elastogram, and appropriately selected hard threshold can improve classification accuracy. |
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Keywords: | Thyroid nodule Elastography Hard area ratio Hard threshold SVM (support vector machine) |
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