无线技术在纤维化患者中的胸部检查:一个试点病例报告

Marco Umberto Scaramozzino, Sapone Giovanni, Ubaldo Romeo Plastina, Guido Levi.
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引用次数: 0

摘要

医生使用听诊作为胸部检查的标准方法:它简单、可靠、无创,被广泛接受。人工智能(AI)是胸部检查的新前沿,因为它可以整合所有可用的数据(临床,仪器,实验室,功能),允许客观评估,精确诊断,甚至肺部疾病的表型表征。提高检查的敏感性和特异性有助于提供量身定制的诊断和治疗指征,同时考虑到患者的临床病史和合并症。几项主要在儿童中进行的临床研究表明,传统听诊与人工智能辅助听诊在检测纤维化疾病方面具有良好的一致性。另一方面,人工智能在诊断阻塞性肺病方面的应用仍存在争议,因为它在检测某些类型的肺部噪音(如湿声和干声)时给出的结果不一致。因此,人工智能在临床中的应用还需进一步研究。 在我们介绍的案例中,数据整合使我们能够做出正确的诊断,避免侵入性手术,并降低国家卫生系统的成本;我们表明,整合技术可以提高限制性肺部疾病的诊断。将需要随机对照试验来证实这项初步工作的结论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Chest Examination with Wireless Technology in a Patient with Fibrotic Disease: A Pilot Case Report
Physicians use auscultation as a standard method of thoracic examination: it is simple, reliable, non-invasive, and widely accepted. Artificial intelligence (AI) is the new frontier of thoracic examination as it makes it possible to integrate all available data (clinical, instrumental, laboratory, functional), allowing for objective assessments, precise diagnoses, and even the phenotypical characterization of lung diseases. Increasing the sensitivity and specificity of examinations helps provide tailored diagnostic and therapeutic indications, which also take into account the patient's clinical history and comorbidities. Several clinical studies, mainly conducted in children, have shown a good concordance between traditional and AI-assisted auscultation in detecting fibrotic diseases. On the other hand, the use of AI for the diagnosis of obstructive pulmonary disease is still debated as it gave inconsistent results when detecting certain types of lung noises, such as wet and dry crackles. Therefore, the application of AI in clinical practice needs further investigation. In the case we present, data integration allowed us to make the right diagnosis, avoid invasive procedures, and reduce the costs for the national health system; we show that integrating technologies can improve the diagnosis of restrictive lung disease. Randomized controlled trials will be needed to confirm the conclusions of this preliminary work.
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