[Comparative evaluation of the accuracy of 3D TMJ analysis performed by different methods of processing computed tomograms].

Q4 Medicine Stomatologiya Pub Date : 2024-01-01 DOI:10.17116/stomat202410302156
A N Ryakhovsky, S A Ryakhovsky
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Abstract

Objective: The aim of this study. Comparison of the accuracy of segmentation of TMJ elements in different ways and assessment of the suitability of the data obtained for the diagnosis of TMJ dysfunction.

Materials and methods: To study the segmentation of the bone elements of the TMJ (articular fossa, head of the LF), 60 computed tomograms of the maxillofacial region of patients were randomly selected in various ways (archival material). In group 1, the results of CT processing by AI diagnostics algorithms (Russia) were collected; in group 2, the results of CT processing based on the semi-automatic segmentation method in the Avantis3D program. The results of CT processing by Avantis3D AI algorithms (Russia) with different probability modes - 0.4 and 0.9, respectively, were selected for the third and fourth groups. Visually, the coincidence of the contours of the LF heads and articular pits isolated using different methods with their contours on all possible sections of the original CT itself was evaluated. The time spent on TMJ segmentation according to CT data was determined and compared using the methods described above.

Results: Of the 240 objects, only 7.5% of the cases showed a slight discrepancy between the contours of the original CT in group b1, which was the lowest of all. A slight discrepancy in the TMJ contours to be corrected is characteristic of the semi-automatic method of segmentation by optical density was detected in 50.4% (group 2). The largest percentage of significant errors not subject to correction was noted in the first group, which made it impossible to perform a full 3D analysis of the TMJ, and the smallest in the second and fourth. The magnitude of the error in determining the width of the articular gap in different groups is comparable to the size of one voxel per CT. When segmentation is carried out using AI, the difference between segmented objects is close to zero values. The average time spent on TMJ segmentation in group 1 was 10.2±1.23 seconds, in group 2 - 12.6±1.87 seconds, in groups 3 and 4 - 0.46±0.12 seconds and 0.46±0.13 seconds, respectively.

Conclusion: The developed automated method for segmenting TMJ elements using AI is obviously more suitable for practical work, since it requires minimal time, and is almost as accurate as other methods under consideration.

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[不同计算机断层扫描处理方法进行的三维颞下颌关节分析的准确性比较评估]。
研究目的本研究的目的是比较以不同方式分割颞下颌关节元素的准确性,并评估所获得的数据是否适用于颞下颌关节功能障碍的诊断:为研究颞下颌关节骨质元素(关节窝、LF 头)的分割,以不同方式随机选取了 60 张患者颌面部的计算机断层扫描图像(档案资料)。在第一组中,收集了人工智能诊断算法(俄罗斯)的 CT 处理结果;在第二组中,收集了基于 Avantis3D 程序中半自动分割方法的 CT 处理结果。第三组和第四组选取的是 Avantis3D 人工智能算法(俄罗斯)的 CT 处理结果,概率模型分别为 0.4 和 0.9。在视觉上,对使用不同方法分离出的 LF 头和关节凹坑的轮廓与原始 CT 本身所有可能截面上的轮廓的重合度进行了评估。根据 CT 数据确定颞下颌关节分割所花费的时间,并使用上述方法进行比较:在 240 个对象中,只有 7.5%的病例与 b1 组原始 CT 的轮廓略有出入,是所有病例中比例最低的。50.4% 的病例(第 2 组)检测出颞下颌关节轮廓存在轻微差异,需要进行校正,这是半自动光密度分割法的特点。在第一组中,由于无法对颞下颌关节进行完整的三维分析,因此无法纠正的重大误差所占比例最大,而在第二组和第四组中,这一比例最小。不同组别在确定关节间隙宽度时的误差大小与每个 CT 一个体素的大小相当。使用人工智能进行分割时,分割对象之间的差异接近零值。第 1 组用于颞下颌关节分割的平均时间为(10.2±1.23)秒,第 2 组为(12.6±1.87)秒,第 3 组和第 4 组分别为(0.46±0.12)秒和(0.46±0.13)秒:利用人工智能开发的颞下颌关节要素自动分割方法显然更适合实际工作,因为它所需时间最短,准确度几乎与其他方法相同。
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来源期刊
Stomatologiya
Stomatologiya Medicine-Medicine (all)
CiteScore
0.40
自引率
0.00%
发文量
93
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