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基于深度卷积神经网络的根尖片上口腔疾病检测。

Dental disease detection on periapical radiographs based on deep convolutional neural networks.

机构信息

Center of Digital Dentistry, Peking University School and Hospital of Stomatology, Beijing, People's Republic of China.

Department of Prosthodontics, Peking University School and Hospital of Stomatology, Beijing, People's Republic of China.

出版信息

Int J Comput Assist Radiol Surg. 2021 Apr;16(4):649-661. doi: 10.1007/s11548-021-02319-y. Epub 2021 Mar 2.

Abstract

OBJECTIVES

It is with a great prospect to develop an auxiliary diagnosis system for dental periapical radiographs based on deep convolutional neural networks (CNNs), and the indications and performances should be investigated. The aim of this study is to train CNNs for lesion detections on dental periapical radiographs, to evaluate performances across disease categories, severity levels, and train strategies.

METHODS

Deep CNNs with region proposal techniques were constructed for disease detections on clinical dental periapical radiographs, including decay, periapical periodontitis, and periodontitis, leveled as mild, moderate, and severe. Four strategies were carried out to train corresponding networks with all disease and level categories (baseline), all disease categories (Net A), each disease category (Net B), and each level category (Net C) and validated by a fivefold cross-validation method afterward. Metrics, including intersection over union (IoU), precision, recall, and average precision (AP), were compared across diseases, severity levels, and train strategies by analysis of variance.

RESULTS

Lesions were detected with precision and recall generally between 0.5 and 0.6 on each kind of disease. The influence of train strategy, disease category, and severity level were all statistically significant on performances (P < .001). Decay and periapical periodontitis lesions were detected with precision, recall, and AP values less than 0.25 for mild level, while 0.2-0.3 for moderate level and 0.5-0.6 for severe level. Net A performed similar to baseline (P > 0.05 for IoU, precision, and recall), while Net B and Net C performed slightly better than baseline under certain circumstances (P < 0.05), but Net C failed to predict mild decay.

CONCLUSIONS

The deep CNNs are able to detect diseases on clinical dental periapical radiographs. This study reveals that the CNNs prefer to detect lesions with severe levels, and it is better to train the CNNs with customized strategy for each disease.

摘要

目的

基于深度卷积神经网络(CNN)开发牙尖周放射影像辅助诊断系统具有广阔前景,需要对其适应证和性能进行研究。本研究旨在训练 CNN 对牙尖周放射影像中的病变进行检测,评估其在不同病种、严重程度分级和训练策略下的性能。

方法

采用基于区域建议技术的深度 CNN 对临床牙尖周放射影像中的病变进行检测,包括龋坏、尖周牙周炎和牙周炎,分为轻度、中度和重度。采用 4 种策略对所有病种和严重程度分级(基线策略)、所有病种(Net A)、各病种(Net B)和各严重程度分级(Net C)进行网络训练,然后采用 5 折交叉验证法进行验证。采用方差分析比较不同病种、严重程度分级和训练策略下的指标,包括交并比(IoU)、精确率、召回率和平均精确率(AP)。

结果

在每种疾病中,病变的检测精度和召回率一般在 0.5 到 0.6 之间。训练策略、病种和严重程度分级对性能的影响均具有统计学意义(P < 0.001)。对于轻度,龋坏和尖周牙周炎的病变检测精确率、召回率和 AP 值小于 0.25,而中度为 0.2-0.3,重度为 0.5-0.6。Net A 的性能与基线相似(IoU、精确率和召回率的 P 值> 0.05),而 Net B 和 Net C 在某些情况下的性能略优于基线(P < 0.05),但 Net C 无法预测轻度龋坏。

结论

深度 CNN 能够检测临床牙尖周放射影像中的疾病。本研究表明,CNN 更倾向于检测严重程度分级的病变,并且为每种疾病定制训练策略来训练 CNN 效果更好。

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