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Automated classification of four types of developmental odontogenic cysts

机译:自动分类四种发育性牙源性囊肿

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摘要

Odontogenic cysts originate from remnants of the tooth forming epithelium in the jaws and gingiva. There are various kinds of such cysts with different biological behaviours that carry different patient risks and require different treatment plans. Types of odontogenic cysts can be distinguished by the properties of their epithelial layers in H&E stained samples. Herein we detail a set of image features for automatically distinguishing between four types of odontogenic cyst in digital micrographs and evaluate their effectiveness using two statistical classifiers - a support vector machine (SVM) and bagging with logistic regression as the base learner (BLR). Cyst type was correctly predicted from among four classes of odontogenic cysts between 83.8% and 92.3% of the time with an SVM and between 90. ±. 0.92% and 95.4. ±. 1.94% with a BLR. One particular cyst type was associated with the majority of misclassifications. Omission of this cyst type from the data set improved the classification rate for the remaining three cyst types to 96.2% for both SVM and BLR.
机译:牙源性囊肿起源于在颌骨和牙龈中形成上皮的牙齿残余物。这类具有不同生物学行为的囊肿存在着不同的患者风险,需要不同的治疗方案。牙源性囊肿的类型可以通过H&E染色样品中上皮层的特性来区分。本文中,我们详细介绍了一组图像特征,用于在数字显微照片中自动区分四种类型的牙源性囊肿,并使用两个统计分类器-支持向量机(SVM)和以逻辑回归作为基本学习器(BLR)的装袋法评估其有效性。从四类牙源性囊肿中正确地预测到囊肿类型的时间为83.8%至92.3%,支持向量机的时间为90.±。 0.92%和95.4。 ±。 BLR的1.94%。一种特定的囊肿类型与大多数错误分类有关。从数据集中省略这种类型的囊肿,对于SVM和BLR,其余三种囊肿的分类率提高到96.2%。

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