Viral myocarditis in pediatrics: A review of current diagnostic methods and future directions.

IF 0.7 Q4 CARDIAC & CARDIOVASCULAR SYSTEMS
Annals of Pediatric Cardiology Pub Date : 2025-01-01 Epub Date: 2025-07-14 DOI:10.4103/apc.apc_236_24
Iyas Dawood, Samahir Taha Alhussein, Wefag Yahya Adam Wadi, Rana Abdalgadir Yousif Abdalgadir, Sarah Siddig Ibrahim Mohammed, Elaf Hamza Makkawi Ahmed
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引用次数: 0

Abstract

Viral myocarditis is the inflammation of heart myocytes resulting from viral infection. Incidence in the pediatric population could reach 2 per 100,000 per year, and COVID-19 infection is a significant risk factor, which increases the possibility of having an infection by 40 times. Early detection results in catching the disease early and consequently improves outcomes. Clinical presentation of viral myocarditis in children could vary from mild prodromal symptoms to severe heart failure. Clinical examination, electrocardiogram, and chest X-ray may give clues for physiological and structural signs usually associated with the disease. However, they are inconclusive as they lack both accuracy and specificity. Biomarkers used to track the disease usually lack sensitivity and specificity. Cardiac magnetic resonance (CMR) is the imaging of choice to diagnose viral myocarditis by showing edema and late gadolinium enhancement. Point-of-care ultrasound has been approved as a good imaging method for early detection. It can be used as an effective screening tool for high-risk patients. Positron emission tomography scan is very sensitive in detecting disease early in its acute phase, especially if combined with CMR. All imaging studies are prone to interpretation bias, leading to a misdiagnosis. Endomyocardial biopsy is the gold standard method for diagnosis. However, it is time-consuming and ineffective as an early detection tool. Artificial intelligence (AI) helps with interpretation, decreasing bias, improving accuracy, and saving time and manpower. With more research and evidence, adopting AI-based methods to diagnose myocarditis in pediatrics could offer early detection, reduce costs, and save time for early intervention. Genetics helps identify inflammatory pathways involved in vulnerable patients, and genetic therapy may suppress disease progression by mitigating these pathways. Research focused on children is highly encouraged, and collaboration between healthcare institutions to develop telemedicine-based programs is influential.

儿科病毒性心肌炎:目前诊断方法及未来发展方向的综述。
病毒性心肌炎是由病毒感染引起的心肌细胞炎症。儿童人群的发病率每年可达10万分之2,COVID-19感染是一个重要的危险因素,使感染的可能性增加了40倍。早期发现可以早期发现疾病,从而改善结果。儿童病毒性心肌炎的临床表现可以从轻微的前体症状到严重的心力衰竭。临床检查、心电图和胸片可提示通常与该病相关的生理和结构征象。然而,它们是不确定的,因为它们缺乏准确性和特异性。用于追踪疾病的生物标志物通常缺乏敏感性和特异性。心脏磁共振(CMR)是诊断病毒性心肌炎的首选影像学检查,可显示水肿和晚期钆增强。即时超声已被认为是一种早期发现的良好成像方法。它可以作为一种有效的筛查高危患者的工具。正电子发射断层扫描在疾病急性期的早期检测非常敏感,特别是与CMR联合使用时。所有影像学检查都容易出现解释偏差,导致误诊。心内膜肌活检是诊断的金标准方法。然而,作为一种早期检测工具,它既耗时又无效。人工智能(AI)有助于翻译,减少偏见,提高准确性,节省时间和人力。随着更多的研究和证据,采用基于人工智能的方法诊断儿科心肌炎可以早期发现,降低成本,节省早期干预的时间。遗传学有助于识别易感患者的炎症途径,基因治疗可能通过减轻这些途径来抑制疾病进展。以儿童为重点的研究受到高度鼓励,医疗机构之间的合作开发基于远程医疗的项目是有影响力的。
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
Annals of Pediatric Cardiology
Annals of Pediatric Cardiology CARDIAC & CARDIOVASCULAR SYSTEMS-
CiteScore
1.40
自引率
14.30%
发文量
51
审稿时长
23 weeks
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