Institute of Biochemistry and Biophysics, University of Tehran, Tehran, 1417614335, Iran.
Integrated Biophysics and Bioengineering Lab (iBL), Institute of Biochemistry and Biophysics, University of Tehran, Tehran, 1417614335, Iran.
Sci Rep. 2024 Mar 22;14(1):6912. doi: 10.1038/s41598-024-54939-4.
In pulmonary inflammation diseases, like COVID-19, lung involvement and inflammation determine the treatment regime. Respiratory inflammation is typically arisen due to the cytokine storm and the leakage of the vessels for immune cells recruitment. Currently, such a situation is detected by the clinical judgment of a specialist or precisely by a chest CT scan. However, the lack of accessibility to the CT machines in many poor medical centers as well as its expensive service, demands more accessible methods for fast and cheap detection of lung inflammation. Here, we have introduced a novel method for tracing the inflammation and lung involvement in patients with pulmonary inflammation, such as COVID-19, by a simple electrolyte detection in their sputum samples. The presence of the electrolyte in the sputum sample results in the fern-like structures after air-drying. These fern patterns are different in the CT positive and negative cases that are detected by an AI application on a smartphone and using a low-cost and portable mini-microscope. Evaluating 160 patient-derived sputum sample images, this method demonstrated an interesting accuracy of 95%, as confirmed by CT-scan results. This finding suggests that the method has the potential to serve as a promising and reliable approach for recognizing lung inflammatory diseases, such as COVID-19.
在肺部炎症性疾病(如 COVID-19)中,肺部受累和炎症决定了治疗方案。呼吸道炎症通常是由细胞因子风暴和血管渗漏引起免疫细胞募集引起的。目前,这种情况是通过专家的临床判断或通过胸部 CT 扫描来精确检测。然而,许多医疗中心缺乏 CT 机的可及性,以及其昂贵的服务,这就需要更易获取的方法来快速、廉价地检测肺部炎症。在这里,我们通过对肺部炎症患者(如 COVID-19)的痰样本中的简单电解质检测,引入了一种追踪炎症和肺部受累的新方法。在痰样本中存在电解质会导致空气干燥后出现蕨类样结构。这些蕨类图案在 CT 阳性和阴性病例中是不同的,这是通过智能手机上的人工智能应用程序和使用低成本、便携式迷你显微镜检测到的。通过对 160 例患者来源的痰样本图像进行评估,该方法的准确性达到了有趣的 95%,这与 CT 扫描结果一致。这一发现表明,该方法有可能成为识别肺部炎症性疾病(如 COVID-19)的一种有前途和可靠的方法。