Advances in rhabdomyolysis: A review of pathogenesis, diagnosis, and treatment.

IF 1.9 4区 医学 Q2 ORTHOPEDICS
Bo-Fan Yang, Duo Li, Chun-Li Liu, Yu Luo, Jie Shi, Xiao-Qin Guo, Hao-Jun Fan, Qi Lv
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引用次数: 0

Abstract

Rhabdomyolysis (RM) is a multifactorial clinical syndrome characterized by the disintegration and necrosis of muscle tissue, leading to the release of cellular contents into the circulation. One of the most severe complications of RM is acute kidney injury, with a mortality rate of 20%-50%. Early and timely diagnosis is the key to improving the prognosis of patients with RM. The etiology of RM is complex and associated with various traumas, drugs, medications, and hereditary diseases, and the clinical symptoms are nonspecific. Therefore, its diagnosis highly relies on the doctor's experience and the level of medical equipment. However, RM often occurs in situations with limited medical resources, such as natural disasters, battlefields, and large-scale traffic accidents. In these scenarios, the varying levels of expertise among rescue personnel can lead to delays in diagnosis and treatment, thereby increasing the risk of mortality. This article provides a comprehensive review of the etiology, pathogenesis, complications, diagnostic, and treatment methods of RM. It also aims to offer new perspectives on the diagnosis and prognosis of RM by integrating machine learning and artificial intelligence. It is believed that this article can help pre-hospital rescuers and in-hospital doctors have a comprehensive understanding of RM to improve the patients' outcomes and overcome the challenges.

横纹肌溶解的研究进展:发病机制、诊断和治疗的综述。
横纹肌溶解(Rhabdomyolysis, RM)是一种多因素临床综合征,其特征是肌肉组织解体和坏死,导致细胞内容物释放到循环中。RM最严重的并发症之一是急性肾损伤,死亡率为20%-50%。早期及时诊断是改善RM患者预后的关键。RM病因复杂,与各种创伤、药物、用药、遗传性疾病有关,临床症状无特异性。因此,其诊断高度依赖于医生的经验和医疗设备水平。然而,RM经常发生在医疗资源有限的情况下,如自然灾害、战场、大规模交通事故等。在这些情况下,救援人员的不同专业水平可能导致诊断和治疗的延误,从而增加死亡的风险。本文就该病的病因、发病机制、并发症、诊断及治疗方法作一综述。通过机器学习和人工智能的结合,为RM的诊断和预后提供新的视角。相信本文可以帮助院前救援人员和院内医生对RM有一个全面的了解,以改善患者的预后,克服挑战。
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
CiteScore
3.80
自引率
4.80%
发文量
1707
审稿时长
28 weeks
期刊介绍: Chinese Journal of Traumatology (CJT, ISSN 1008-1275) was launched in 1998 and is a peer-reviewed English journal authorized by Chinese Association of Trauma, Chinese Medical Association. It is multidisciplinary and designed to provide the most current and relevant information for both the clinical and basic research in the field of traumatic medicine. CJT primarily publishes expert forums, original papers, case reports and so on. Topics cover trauma system and management, surgical procedures, acute care, rehabilitation, post-traumatic complications, translational medicine, traffic medicine and other related areas. The journal especially emphasizes clinical application, technique, surgical video, guideline, recommendations for more effective surgical approaches.
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