Clinical Application of Artificial Intelligence Preoperative Planning System Combined with Expert Database Retrieval in Complex Revision Hip Surgery.

IF 1.2 4区 综合性期刊 Q3 MULTIDISCIPLINARY SCIENCES
Pei Liu, Guojie Liu, Xiaolu Xi, Ke Yuan, Qiang Xie, Peijian Tong, Yongqiang Sun
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Abstract

Accurate preoperative planning in revision hip arthroplasty is crucial for achieving successful outcomes. To enhance the intuitive evaluation of acetabular bone defect severity and leverage previous successful experience in revision hip arthroplasty, this study proposes a novel approach based on expert surgical case database retrieval and is initially implemented in clinical application. In this study, five patients who required revision hip arthroplasty were preoperatively planned to employ the expert case database surgical planning system.The patient's imaging data was entered into the system and matched with cases in the expert case database. Based on the expert's surgical experience, a revision surgery plan was recommended. If no suitable case was found, the model and position of the prosthesis were planned based on patient-specific reconstruction results. A total of five patients were enrolled in this study, four males and one female, with a mean age of 50.6 years. The diagnosis was aseptic prosthesis loosening after hip arthroplasty. The mean operative time was 123.2 min, and the mean intraoperative hemorrhage was 672 mL. No intraoperative complications, such as vascular or nerve injury, were observed. In Case 2, for instance, the application of this innovative planning scheme enabled the surgeon to delineate the revision surgery plan for this patient in the preoperative period, thereby reducing the operative time and intraoperative hemorrhage. Furthermore, patients could be apprised of the outcomes of analogous cases in advance. Leveraging a big data analysis approach through our comprehensive case database enables automated identification of matching expert treatment plans throughout the entire process. This particularly benefits inexperienced orthopedic surgeons by providing accurate guidance on surgical strategies to assist them in selecting appropriate prosthetic sizes and mounting positions. Additionally, the matching results can offer patients visualizations depicting predicted postoperative outcomes.

人工智能术前计划系统结合专家数据库检索在复杂髋关节翻修手术中的临床应用。
在翻修髋关节置换术中,准确的术前计划是取得成功的关键。为了提高对髋臼骨缺损严重程度的直观评估,并借鉴以往成功的髋关节翻修成形术经验,本研究提出了一种基于专家手术病例数据库检索的新方法,并初步应用于临床。在本研究中,5例需要翻修髋关节置换术的患者术前计划采用专家病例数据库手术计划系统。将患者的影像数据输入系统,并与专家病例数据库中的病例进行匹配。根据专家的手术经验,推荐一个翻修手术方案。如果没有找到合适的病例,则根据患者的具体重建结果规划假体的模型和位置。本研究共纳入5例患者,男4例,女1例,平均年龄50.6岁。诊断为髋关节置换术后无菌性假体松动。平均手术时间123.2 min,平均术中出血672 mL。术中未见血管、神经损伤等并发症。以病例2为例,该创新计划方案的应用使外科医生能够在术前为该患者勾画出翻修手术计划,从而减少了手术时间和术中出血。此外,患者可以提前得知类似病例的结果。通过我们全面的病例数据库,利用大数据分析方法,可以在整个过程中自动识别匹配的专家治疗方案。这尤其有利于经验不足的骨科医生提供准确的指导手术策略,以帮助他们选择合适的假肢尺寸和安装位置。此外,匹配结果可以为患者提供可视化描述预测的术后结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Jove-Journal of Visualized Experiments
Jove-Journal of Visualized Experiments MULTIDISCIPLINARY SCIENCES-
CiteScore
2.10
自引率
0.00%
发文量
992
期刊介绍: JoVE, the Journal of Visualized Experiments, is the world''s first peer reviewed scientific video journal. Established in 2006, JoVE is devoted to publishing scientific research in a visual format to help researchers overcome two of the biggest challenges facing the scientific research community today; poor reproducibility and the time and labor intensive nature of learning new experimental techniques.
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