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基于无监督机器学习算法的下颌管走行分析。

Analysis of the mandibular canal course using unsupervised machine learning algorithm.

机构信息

Department of Oral and Maxillofacial Radiology, Yonsei University College of Dentistry, Seoul, Republic of Korea.

Department of Preventive Dentistry & Public Oral Health, Brain Korea 21 PLUS Project, Yonsei University College of Dentistry, Seoul, Republic of Korea.

出版信息

PLoS One. 2021 Nov 19;16(11):e0260194. doi: 10.1371/journal.pone.0260194. eCollection 2021.

Abstract

OBJECTIVES

Anatomical structure classification is necessary task in medical field, but the inevitable variability of interpretation among experts makes reliable classification difficult. This study aims to introduce cluster analysis, unsupervised machine learning method, for classification of three-dimensional (3D) mandibular canal (MC) courses, and to visualize standard MC courses derived from cluster analysis in the Korean population.

MATERIALS AND METHODS

A total of 429 cone-beam computed tomography images were used. Four sites in the mandible were selected for the measurement of the MC course and four parameters, two vertical and two horizontal parameters were measured per site. Cluster analysis was carried out as follows: parameter measurement, parameter normalization, cluster tendency evaluation, optimal number of clusters determination, and k-means cluster analysis. The 3D MC courses were classified into three types with statistically significant mean differences by cluster analysis.

RESULTS

Cluster 1 showed a smooth line running towards the lingual side in the axial view and a steep slope in the sagittal view. Cluster 2 ran in an almost straight line closest to the lingual and inferior border of mandible. Cluster 3 showed the pathway with a bent buccally in the axial view and an increasing slope in the sagittal view in the posterior area. Cluster 2 showed the highest distribution (42.1%), and males were more widely distributed (57.1%) than the females (42.9%). Cluster 3 comprised similar ratio of male and female cases and accounted for 31.9% of the total distribution. Cluster 1 had the least distribution (26.0%) Distributions of the right and left sides did not show a statistically significant difference.

CONCLUSION

The MC courses were automatically classified as three types through cluster analysis. Cluster analysis enables the unbiased classification of the anatomical structures by reducing observer variability and can present representative standard information for each classified group.

摘要

目的

解剖结构分类是医学领域的必要任务,但专家解释的不可避免变化使得可靠的分类变得困难。本研究旨在引入聚类分析,一种无监督的机器学习方法,用于分类三维(3D)下颌管(MC)的行程,并可视化从聚类分析得出的韩国人群标准 MC 行程。

材料与方法

共使用了 429 张锥形束 CT 图像。在下颌骨中选择了四个部位来测量 MC 行程,每个部位测量两个垂直和两个水平参数。聚类分析如下进行:参数测量、参数归一化、聚类趋势评估、最佳聚类数确定和 k-均值聚类分析。通过聚类分析,3D MC 行程分为三种类型,具有统计学显著的平均差异。

结果

聚类 1 在轴视图中显示一条向舌侧平滑的线,在矢状视图中显示陡峭的斜率。聚类 2 以最接近下颌舌侧和下侧的近乎直线运行。聚类 3 在轴视图中显示颊侧弯曲的路径,在矢状视图中显示后区斜率增加。聚类 2 分布最高(42.1%),男性分布(57.1%)高于女性(42.9%)。聚类 3 男女病例比例相似,占总分布的 31.9%。聚类 1 分布最少(26.0%)。左右两侧的分布无统计学显著差异。

结论

通过聚类分析,MC 行程自动分为三种类型。聚类分析通过减少观察者的变异性,可以对解剖结构进行无偏分类,并为每个分类组提供具有代表性的标准信息。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/10f2/8604350/5e59ea5e0003/pone.0260194.g001.jpg

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