Zheng Qiang, She Hongjiang, Zhang Yifu, Zhao Peiwen, Liu Xingyu, Xiang Bingyan
First People's Hospital of Zunyi City, Zunyi, China.
Int Orthop. 2025 May 10. doi: 10.1007/s00264-025-06539-8.
To evaluate the predictive ability of AI HIP in determining the size and position of prostheses during complex total hip arthroplasty (THA). Additionally, it investigates the factors influencing the accuracy of preoperative planning predictions.
From April 2021 to December 2023, patients with complex hip joint diseases were divided into the AI preoperative planning group (n = 29) and the X-ray preoperative planning group (n = 27). Postoperative X-rays were used to measure acetabular anteversion angle, abduction angle, tip-to-sternum distance, intraoperative duration, blood loss, planning time, postoperative Harris Hip Scores (at 2 weeks, 3 months, and 6 months), and visual analogue scale (VAS) pain scores (at 2 weeks and at final follow-up) to analyze clinical outcomes.
On the acetabular side, the accuracy of AI preoperative planning was higher compared to X-ray preoperative planning (75.9% vs. 44.4%, P = 0.016). On the femoral side, AI preoperative planning also showed higher accuracy compared to X-ray preoperative planning (85.2% vs. 59.3%, P = 0.033). The AI preoperative planning group showed superior outcomes in terms of reducing bilateral leg length discrepancy (LLD), decreasing operative time and intraoperative blood loss, early postoperative recovery, and pain control compared to the X-ray preoperative planning group (P < 0.05). No significant differences were observed between the groups regarding bilateral femoral offset (FO) differences, bilateral combined offset (CO) differences, abduction angle, anteversion angle, or tip-to-sternum distance. Factors such as gender, age, affected side, comorbidities, body mass index (BMI) classification, bone mineral density did not affect the prediction accuracy of AI HIP preoperative planning.
Artificial intelligence-based 3D planning can be effectively utilized for preoperative planning in complex THA. Compared to X-ray templating, AI demonstrates superior accuracy in prosthesis measurement and provides significant clinical benefits, particularly in early postoperative recovery.
评估人工智能髋关节成像(AI HIP)在复杂全髋关节置换术(THA)中确定假体大小和位置的预测能力。此外,研究影响术前规划预测准确性的因素。
2021年4月至2023年12月,将复杂髋关节疾病患者分为AI术前规划组(n = 29)和X线术前规划组(n = 27)。术后X线用于测量髋臼前倾角、外展角、尖端至胸骨距离、手术时长、失血量、规划时间、术后Harris髋关节评分(术后2周、3个月和6个月)以及视觉模拟量表(VAS)疼痛评分(术后2周和最终随访时),以分析临床结果。
在髋臼侧,AI术前规划的准确性高于X线术前规划(75.9%对44.4%,P = 0.016)。在股骨侧,AI术前规划的准确性也高于X线术前规划(85.2%对59.3%,P = 0.033)。与X线术前规划组相比,AI术前规划组在减少双侧下肢长度差异(LLD)、缩短手术时间和术中失血量、促进术后早期恢复以及控制疼痛方面表现出更好的结果(P < 0.05)。两组在双侧股骨偏心距(FO)差异、双侧联合偏心距(CO)差异、外展角、前倾角或尖端至胸骨距离方面未观察到显著差异。性别、年龄、患侧、合并症、体重指数(BMI)分类、骨密度等因素不影响AI HIP术前规划的预测准确性。
基于人工智能的三维规划可有效用于复杂THA的术前规划。与X线模板相比,AI在假体测量方面具有更高的准确性,并提供显著的临床益处,尤其是在术后早期恢复方面。