股骨头置换术后并发症临床预测模型的建立。

IF 1.6 Q2 MEDICINE, GENERAL & INTERNAL
Journal of clinical medicine research Pub Date : 2024-12-01 Epub Date: 2024-11-11 DOI:10.14740/jocmr6047
Ke Wei Li, Shuai Rong, Hao Li
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引用次数: 0

摘要

背景:股骨头置换术应用广泛,疗效显著,但术后并发症的复杂性和多样性给预后带来了严重的挑战。迫切需要建立一种能够综合多种因素,准确预测术后并发症风险的临床预测模型,以指导临床实践,优化患者管理策略。本研究致力于构建基于统计学和机器学习技术的术后并发症预测模型,为患者提供更安全、更有效的治疗体验。方法:收集我院骨科行股骨头置换术的患者186例。42例患者至少有一种术后并发症,144例无并发症。分别收集患者术前、术后资料,收集病史,研究影响患者术后并发症发生的相关因素,并建立预测模型。结果:单因素logistic回归包括患者性别、年龄、体重指数、术前损伤方式诊断、有无骨质疏松、病史、手术相关信息、实验室指标等。分析结果认为,手术时间、谷丙转氨酶(ALT)、天冬氨酸转氨酶(AST)、白细胞计数、血清白蛋白、骨质疏松是影响股骨头置换术后并发症发生的危险因素(P < 0.2)。将所得数据进一步纳入多因素回归分析,结果显示手术时间、AST、白细胞计数、血清白蛋白、骨质疏松是股骨头置换术后并发症的独立危险因素(P < 0.05)。结论:根据本研究结果,确定手术时间、AST、白细胞计数、血清白蛋白、骨质疏松等5个因素是股骨头置换术后并发症的独立危险因素。此外,本研究建立的预测模型具有较高的科学和临床应用价值,为临床医生和患者评估影响股骨头置换术后并发症风险提供了重要工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Construction of a Clinical Prediction Model for Complications After Femoral Head Replacement Surgery.

Background: While femoral head replacement is widely used with remarkable efficacy, the complexity and diversity of postoperative complications pose a serious prognostic challenge. There is an urgent need to develop a clinical prediction model that can integrate multiple factors and accurately predict the risk of postoperative complications to guide clinical practice and optimize patient management strategies. This study is dedicated to constructing a postoperative complication prediction model based on statistics and machine learning techniques, in order to provide patients with a safer and more effective treatment experience.

Methods: A total of 186 patients who underwent femoral head replacement in the Orthopedic Department of our hospital were collected in this study. Forty-two of the patients had at least one postoperative complication, and 144 had no complications. The preoperative and postoperative data of patients were collected separately and medical history was collected to study the correlation factors affecting the occurrence of postoperative complications in patients and to establish a prediction model.

Results: Possibly relevant factors were included in a one-way logistic regression, which included the patient's gender, age, body mass index, preoperative diagnosis of the mode of injury, osteoporosis or lack thereof, as well as medical history, surgical-related information, and laboratory indices. After analyzing the results, it was concluded that operation time, alanine transaminase (ALT), aspartate aminotransferase (AST), white blood cell count, serum albumin, and osteoporosis, were the risk factors affecting the development of complications after femoral head replacement in patients (P < 0.2). The data obtained were further included in a multifactorial regression, and the results showed that operation time, AST, white blood cell count, serum albumin, and osteoporosis were independent risk factors for complications after the patients underwent femoral head replacement (P < 0.05).

Conclusion: Based on the results of this study, five factors, including duration of surgery, AST, white blood cell count, serum albumin, and osteoporosis, were identified as independent risk factors for complications after patients underwent femoral head replacement. In addition, the prediction model developed in this study has a high scientific and clinical application value, providing clinicians and patients with an important tool for assessing the risk of complications after affected femoral head replacement.

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