A Controlled Vocabulary to Represent Sonographic Features of the Thyroid and its application in a Bayesian Network to Predict Thyroid Nodule Malignancy.

Yueyi I Liu, Aya Kamaya, Terry S Desser, Daniel L Rubin
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Abstract

It is challenging to distinguish benign from malignant thyroid nodules on high resolution ultrasound. Many ultrasound features have been studied individually as predictors for thyroid malignancy, none with a high degree of accuracy, and there is no consistent vocabulary used to describe the features. Our hypothesis is that a standard vocabulary will advance accuracy. We performed a systemic literature review and identified all the sonographic features that have been well studied in thyroid cancers. We built a controlled vocabulary for describing sonographic features and to enable us to unify data in the literature on the predictive power of each feature. We used this terminology to build a Bayesian network to predict thyroid malignancy. Our Bayesian network performed similar to or slightly better than experienced radiologists. Controlled terminology for describing thyroid radiology findings could be useful to characterize thyroid nodules and could enable decision support applications.

Abstract Image

Abstract Image

表达甲状腺声像图特征的控制词汇及其在贝叶斯网络中预测甲状腺结节恶性肿瘤的应用。
高分辨超声对甲状腺结节的良恶性鉴别具有挑战性。许多超声特征已经被单独研究作为甲状腺恶性肿瘤的预测因素,没有一个具有高度的准确性,并且没有一致的词汇用于描述这些特征。我们的假设是,标准词汇会提高准确性。我们进行了系统的文献回顾,并确定了甲状腺癌中已得到充分研究的所有超声特征。我们建立了一个用于描述超声特征的受控词汇表,使我们能够统一文献中关于每个特征的预测能力的数据。我们使用这个术语来建立一个贝叶斯网络来预测甲状腺恶性肿瘤。我们的贝叶斯网络的表现与经验丰富的放射科医生相似或略好一些。描述甲状腺放射学发现的受控术语可能有助于描述甲状腺结节的特征,并可能使决策支持应用成为可能。
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