甲状腺超声图像中甲状腺结节分类的改进VGG-16

Thia Anissa, H. A. Nugroho, I. Soesanti
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引用次数: 0

摘要

甲状腺结节组成是甲状腺恶性肿瘤的决定因素之一。超声检查可以发现甲状腺结节,是最灵敏的影像学检查方法之一。然而,超声成像方法容易受到医生经验、水平等因素的影响。因此,一个更客观的诊断系统旨在帮助医生做出决定。本研究开发了一种方法来帮助专家确定成分特征。专家们已经裁剪了数据集,然后使用自适应中值过滤器进行预处理。随后,使用改进的VGG16将数据分为囊状、实状、复杂和海绵状四类。检测结果的准确度为99.65%,微观曲线下面积为99.98%,宏观曲线下面积为99.99%。这些结果表明,我们提出的方法可以用于小数据集,以帮助医生或专家识别结节的特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved VGG-16 for Classifying Thyroid Nodule on Thyroid Ultrasound Images
Thyroid nodule composition is one of the determinants of thyroid cancer malignancy. Nodules in the thyroid can be detected by ultrasonography, which is one of the most sensitive imaging methods. However, imaging methods by ultrasonography are susceptible to doctors’ experiences, levels, and other factors. Therefore, a more objective diagnostic system is intended to assist doctors in creating the decision. This study developed a method to help experts define the composition characteristics. The experts have already cropped the dataset and then moved to preprocess using an adaptive median filter. Subsequently, the data were classified with the improved VGG16 into four categories those are cystic, solid, complex, and spongiform. The testing result procured 99.65% for accuracy, 99.98% for the micro area under the curve, and 99.99% for the macro area under the curve. These results indicate that our proposed method can be used in a small dataset to help doctors or experts identify the nodule’s characteristics.
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