Belkacem Abdelkader Nasreddine, Ouhbi Sofia, Lakas Abderrahmane, Benkhelifa Elhadj, Chen Chao
Department of Computer and Network Engineering, College of Information Technology, UAE University, Al Ain, United Arab Emirates.
Department of Computer Science and Software Engineering, College of Information Technology, UAE University, Al Ain, United Arab Emirates.
Front Med (Lausanne). 2021 Mar 31;8:585578. doi: 10.3389/fmed.2021.585578. eCollection 2021.
Respiratory symptoms can be caused by different underlying conditions, and are often caused by viral infections, such as Influenza-like illnesses or other emerging viruses like the Coronavirus. These respiratory viruses, often, have common symptoms: coughing, high temperature, congested nose, and difficulty breathing. However, early diagnosis of the type of the virus, can be crucial, especially in cases, such as the COVID-19 pandemic. Among the factors that contributed to the spread of the COVID-19 pandemic were the late diagnosis or misinterpretation of COVID-19 symptoms as regular flu-like symptoms. Research has shown that one of the possible differentiators of the underlying causes of different respiratory diseases could be the cough sound, which comes in different types and forms. A reliable lab-free tool for early and accurate diagnosis, which can differentiate between different respiratory diseases is therefore very much needed, particularly during the current pandemic. This concept paper discusses a medical hypothesis of an end-to-end portable system that can record data from patients with symptoms, including coughs (voluntary or involuntary) and translate them into health data for diagnosis, and with the aid of machine learning, classify them into different respiratory illnesses, including COVID-19. With the ongoing efforts to stop the spread of the COVID-19 disease everywhere today, and against similar diseases in the future, our proposed low cost and user-friendly theoretical solution could play an important part in the early diagnosis.
呼吸道症状可能由不同的潜在病症引起,且常常由病毒感染导致,如流感样疾病或其他新兴病毒,如冠状病毒。这些呼吸道病毒通常有共同症状:咳嗽、高烧、鼻塞和呼吸困难。然而,病毒类型的早期诊断可能至关重要,尤其是在诸如新冠疫情等情况下。导致新冠疫情传播的因素之一是对新冠症状的诊断延迟或将其误判为普通流感样症状。研究表明,不同呼吸道疾病潜在病因的一个可能区别因素可能是咳嗽声音,咳嗽有不同类型和形式。因此,非常需要一种可靠的无需实验室检测的工具来进行早期准确诊断,该工具能够区分不同的呼吸道疾病,尤其是在当前疫情期间。本概念文件讨论了一个端到端便携式系统的医学假设,该系统可以记录有症状患者的数据,包括咳嗽(自愿或非自愿),并将其转化为用于诊断的健康数据,借助机器学习将其分类为不同的呼吸道疾病,包括新冠。在当今各地都在努力阻止新冠疾病传播以及未来对抗类似疾病的过程中,我们提出的低成本且用户友好的理论解决方案可能在早期诊断中发挥重要作用。