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预测隐适美治疗的患者体验:基于人工神经网络的分析

Predicting patient experience of Invisalign treatment: An analysis using artificial neural network.

作者信息

Xu Lin, Mei Li, Lu Ruiqi, Li Yuan, Li Hanshi, Li Yu

机构信息

Department of Orthodontics, State Key Laboratory of Oral Diseases, National Clinical Research Center for Oral Diseases, West China Hospital of Stomatology, Sichuan University, Chengdu, China.

Discipline of Orthodontics, Department of Oral Sciences, Sir John Walsh Research Institute, Faculty of Dentistry, University of Otago, Dunedin, New Zealand.

出版信息

Korean J Orthod. 2022 Jul 25;52(4):268-277. doi: 10.4041/kjod21.255. Epub 2022 Mar 7.

Abstract

OBJECTIVE

Poor experience with Invisalign treatment affects patient compliance and, thus, treatment outcome. Knowing the potential discomfort level in advance can help orthodontists better prepare the patient to overcome the difficult stage. This study aimed to construct artificial neural networks (ANNs) to predict patient experience in the early stages of Invisalign treatment.

METHODS

In total, 196 patients were enrolled. Data collection included questionnaires on pain, anxiety, and quality of life (QoL). A four-layer fully connected multilayer perception with three backpropagations was constructed to predict patient experience of the treatment. The input data comprised 17 clinical features. The partial derivative method was used to calculate the relative contributions of each input in the ANNs.

RESULTS

The predictive success rates for pain, anxiety, and QoL were 87.7%, 93.4%, and 92.4%, respectively. ANNs for predicting pain, anxiety, and QoL yielded areas under the curve of 0.963, 0.992, and 0.982, respectively. The number of teeth with lingual attachments was the most important factor affecting the outcome of negative experience, followed by the number of lingual buttons and upper incisors with attachments.

CONCLUSIONS

The constructed ANNs in this preliminary study show good accuracy in predicting patient experience (i.e., pain, anxiety, and QoL) of Invisalign treatment. Artificial intelligence system developed for predicting patient comfort has potential for clinical application to enhance patient compliance.

摘要

目的

隐适美治疗体验不佳会影响患者的依从性,进而影响治疗效果。提前了解潜在的不适程度有助于正畸医生更好地让患者做好准备,以克服困难阶段。本研究旨在构建人工神经网络(ANN)来预测隐适美治疗早期患者的体验。

方法

共纳入196例患者。数据收集包括关于疼痛、焦虑和生活质量(QoL)的问卷。构建了一个具有三次反向传播的四层全连接多层感知器,以预测患者的治疗体验。输入数据包括17项临床特征。使用偏导数方法计算人工神经网络中每个输入的相对贡献。

结果

疼痛、焦虑和生活质量的预测成功率分别为87.7%、93.4%和92.4%。预测疼痛、焦虑和生活质量的人工神经网络的曲线下面积分别为0.963、0.992和0.982。带舌侧附件的牙齿数量是影响负面体验结果的最重要因素,其次是带附件的舌侧纽扣和上颌切牙的数量。

结论

本初步研究中构建的人工神经网络在预测隐适美治疗患者体验(即疼痛、焦虑和生活质量)方面显示出良好的准确性。为预测患者舒适度而开发的人工智能系统具有临床应用潜力,可提高患者的依从性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/84cd/9314214/8d034945dc8f/kjod-52-4-268-f1.jpg

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