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A Bayesian Classifier for Differentiating Benign versus Malignant Thyroid Nodules using Sonographic Features

机译:使用超声特征区分良性和恶性甲状腺结节的贝叶斯分类器

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摘要

Thyroid nodules are a common, yet challenging clinical problem. The vast majority of these nodules are benign; however, deciding which nodule should undergo biopsy is difficult because the imaging appearance of benign and malignant thyroid nodules overlap. High resolution ultrasound is the primary imaging modality for evaluating thyroid nodules. Many sonographic features have been studied individually as predictors for thyroid malignancy. There has been little work to create predictive models that combine multiple predictors, both imaging features and demographic factors. We have created a Bayesian classifier to predict whether a thyroid nodule is benign or malignant using sonographic and demographic findings. Our classifier performed similar to or slightly better than experienced radiologists when evaluated using 41 thyroid nodules with known pathologic diagnosis. This classifier could be helpful in providing practitioners an objective basis for deciding whether to biopsy suspicious thyroid nodules.
机译:甲状腺结节是常见但具有挑战性的临床问题。这些结节绝大多数是良性的。然而,由于良性和恶性甲状腺结节的影像学表现是重叠的,因此很难确定应进行活检的结节。高分辨率超声是评估甲状腺结节的主要影像学手段。许多超声检查特征已被单独研究作为甲状腺恶性肿瘤的预测指标。创建结合多个预测器(成像功能和人口统计因素)的预测模型的工作很少。我们创建了一个贝叶斯分类器,使用超声和人口统计学结果预测甲状腺结节是良性还是恶性。我们的分类器在使用41个具有已知病理诊断的甲状腺结节进行评估时,其表现与经验丰富的放射线医师相似或略胜于放射线医师。该分类器可能有助于为从业人员提供客观依据,以决定是否对可疑甲状腺结节进行活检。

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