Accuracy of an artificial intelligence algorithm for detecting moderate-to-severe vertebral compression fractures on abdominal and thoracic computed tomography scans.

Q3 Medicine Radiologia Brasileira Pub Date : 2024-05-03 eCollection Date: 2024-01-01 DOI:10.1590/0100-3984.2023.0102
Renata Fernandes Batista Pereira, Paulo Victor Partezani Helito, Renata Vidal Leão, Marcelo Bordalo Rodrigues, Marcos Felippe de Paula Correa, Felipe Veiga Rodrigues
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Abstract

Objective: To describe the accuracy of HealthVCF, a software product that uses artificial intelligence, in the detection of incidental moderate-to-severe vertebral compression fractures (VCFs) on chest and abdominal computed tomography scans.

Materials and methods: We included a consecutive sample of 899 chest and abdominal computed tomography scans of patients 51-99 years of age. Scans were retrospectively evaluated by the software and by two specialists in musculoskeletal imaging for the presence of VCFs with vertebral body height loss > 25%. We compared the software analysis with that of a general radiologist, using the evaluation of the two specialists as the reference.

Results: The software showed a diagnostic accuracy of 89.6% (95% CI: 87.4-91.5%) for moderate-to-severe VCFs, with a sensitivity of 73.8%, a specificity of 92.7%, and a negative predictive value of 94.8%. Among the 145 positive scans detected by the software, the general radiologist failed to report the fractures in 62 (42.8%), and the algorithm detected additional fractures in 38 of those scans.

Conclusion: The software has good accuracy for the detection of moderate-to-severe VCFs, with high specificity, and can increase the opportunistic detection rate of VCFs by radiologists who do not specialize in musculoskeletal imaging.

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人工智能算法检测腹部和胸部计算机断层扫描中重度脊椎压缩骨折的准确性。
目的描述HealthVCF(一款使用人工智能的软件产品)在胸部和腹部计算机断层扫描中检测偶发中重度椎体压缩骨折(VCF)的准确性:我们连续采集了 899 例 51-99 岁患者的胸部和腹部计算机断层扫描样本。扫描结果由软件和两名肌肉骨骼成像专家进行回顾性评估,以确定是否存在椎体高度损失大于 25% 的 VCF。我们将软件的分析结果与普通放射科医生的分析结果进行了比较,并将两位专家的评估结果作为参考:该软件对中重度 VCF 的诊断准确率为 89.6%(95% CI:87.4-91.5%),灵敏度为 73.8%,特异性为 92.7%,阴性预测值为 94.8%。在软件检测出的 145 次阳性扫描中,普通放射科医生未报告骨折的有 62 次(42.8%),而算法在其中的 38 次扫描中检测出了额外的骨折:结论:该软件在检测中度至重度VCF方面具有良好的准确性和较高的特异性,可提高非肌肉骨骼成像专业放射科医生对VCF的机会性检测率。
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来源期刊
Radiologia Brasileira
Radiologia Brasileira Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
2.60
自引率
0.00%
发文量
75
审稿时长
28 weeks
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