[人机交互CT成像AI识别定位技术在C1型桡骨远端骨折治疗中的初步应用]。

Q4 Medicine
Yong-Zhong Cheng, Xiao-Dong Yin, Fei Liu, Xin-Heng Deng, Chao-Lu Wang, Shu-Ke Cui, Yong-Yao Li, Wei Yan
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引用次数: 0

摘要

目的:探讨人机交互软件识别定位C1型桡骨远端骨折的准确性。方法:根据相关的纳入和排除标准,回顾性分析2023年9月至2024年3月14例C1型桡骨远端骨折,其中男性3例,女性11例,年龄27 ~ 82岁。数据被随机分配标识符。一位资深骨科医生检查了这些片子,并在医院的成像系统上测量了每个病例的尺偏角、桡骨高度、掌倾角、关节内台阶和关节内间隙。根据桡骨远端骨折复位标准,将病例分为复位组和非复位组。然后,将这些数据依次输入到人机交互智能软件中,由初级骨科医生分析相同的放射学参数,对病例进行分类,并测量骨折细节。软件分类结果与人工分类结果一致(6例还原,8例非还原)。对于非复位病例,软件进行进一步分析,包括骨分割和骨折识别,生成8份包含骨折识别信息的诊断报告。对于6例复位病例,高级骨科医生和初级骨科医生分别独立分析了医院成像系统和AI软件上的数据。需要复位的骨段由两名资深医生确定并验证,并测量沿X轴(向内和向外)、Z轴(前后)和Y轴(上下)的位移和旋转。人工智能软件为这些病例生成了全面的诊断报告,其中包括所有测量数据和骨折识别细节。结果:人工和人工智能软件方法一致将14例病例分为6个复位组和8个非复位组,数据分布相同。配对样本t检验显示,手工和软件测量的尺偏角、尺骨高度、掌倾角、关节内步长和关节间隙无统计学差异(P < 0.05)。在裂缝识别方面,人工智能软件正确识别出10条c型裂缝和4条b型裂缝。对于6例复位病例,两种方法共分析了24块骨碎片。经验证,发现两种方法鉴定的骨碎片一致。配对样本t检验显示,鉴定出的骨碎片以及沿X、Y和Z轴测量的位移和旋转角度在两种方法之间是一致的。手工测量和软件测量这些参数之间没有统计学差异(P>0.05)。结论:采用人工智能技术的人机交互软件在CT图像上识别和定位C1型桡骨远端骨折的准确性与人工测量相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[Preliminary application of human-computer interaction CT imaging AI recognition and positioning technology in the treatment of type C1 distal radius fractures].

Objective: To explore the accuracy of human-computer interaction software in identifying and locating type C1 distal radius fractures.

Methods: Based on relevant inclusion and exclusion criteria, 14 cases of type C1 distal radius fractures between September 2023 and March 2024 were retrospectively analyzed, comprising 3 males and 11 females(aged from 27 to 82 years). The data were assigned randomized identifiers. A senior orthopedic physician reviewed the films and measured the ulnar deviation angle, radial height, palmar inclination angle, intra-articular step, and intra-articular gap for each case on the hospital's imaging system. Based on the reduction standard for distal radius fractures, cases were divided into reduction group and non-reduction group. Then, the data were sequentially imported into a human-computer interaction intelligent software, where a junior orthopedic physician analyzed the same radiological parameters, categorized cases, and measured fracture details. The categorization results from the software were consistent with manual classifications (6 reduction cases and 8 non-reduction cases). For non-reduction cases, the software performed further analyses, including bone segmentation and fracture recognition, generating 8 diagnostic reports containing fracture recognition information. For the 6 reduction cases, the senior and junior orthopedic physicians independently analyzed the data on the hospital's imaging system and the AI software, respectively. Bone segments requiring reduction were identified, verified by two senior physicians, and measured for displacement and rotation along the X (inward and outward), Z (front and back), and Y (up and down) axes. The AI software generated comprehensive diagnostic reports for these cases, which included all measurements and fracture recognition details.

Results: Both the manual and AI software methods consistently categorized the 14 cases into 6 reduction and 8 non-reduction groups, with identical data distributions. A paired sample t-test revealed no statistically significant differences (P>0.05) between the manual and software-based measurements for ulnar deviation angle, radial ulnar bone height, palmar inclination angle, intra-articular step, and joint space. In fracture recognition, the AI software correctly identified 10 C-type fractures and 4 B-type fractures. For the 6 reduction cases, a total of 24 bone fragments were analyzed across both methods. After verification, it was found that the bone fragments identified by the two methods were consistent. A paired sample t-tests revealed that the identified bone fragments and measured displacement and rotation angles along the X, Y, and Z axes were consistent between the two methods. No statistically significant differences(P>0.05) were found between manual and software measurements for these parameters.

Conclusion: Human-computer interaction software employing AI technology demonstrated comparable accuracy to manual measurement in identifying and locating type C1 distal radius fractures on CT imaging.

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