Department of Computing, Faculty of Arts, Computing and Creative Industry, Universiti Pendidikan, Tanjung Malim 35900, Malaysia.
Department of Biology, Faculty of Science and Mathematics, Universiti Pendidikan Sultan Idris, Tanjong Malim, Perak 35900, Malaysia.
Comput Methods Programs Biomed. 2020 Nov;196:105617. doi: 10.1016/j.cmpb.2020.105617. Epub 2020 Jun 20.
People who have recently recovered from the threat of deteriorating coronavirus disease-2019 (COVID-19) have antibodies to the coronavirus circulating in their blood. Thus, the transfusion of these antibodies to deteriorating patients could theoretically help boost their immune system. Biologically, two challenges need to be surmounted to allow convalescent plasma (CP) transfusion to rescue the most severe COVID-19 patients. First, convalescent subjects must meet donor selection plasma criteria and comply with national health requirements and known standard routine procedures. Second, multi-criteria decision-making (MCDM) problems should be considered in the selection of the most suitable CP and the prioritisation of patients with COVID-19.
This paper presents a rescue framework for the transfusion of the best CP to the most critical patients with COVID-19 on the basis of biological requirements by using machine learning and novel MCDM methods.
The proposed framework is illustrated on the basis of two distinct and consecutive phases (i.e. testing and development). In testing, ABO compatibility is assessed after classifying donors into the four blood types, namely, A, B, AB and O, to indicate the suitability and safety of plasma for administration in order to refine the CP tested list repository. The development phase includes patient and donor sides. In the patient side, prioritisation is performed using a contracted patient decision matrix constructed between 'serological/protein biomarkers and the ratio of the partial pressure of oxygen in arterial blood to fractional inspired oxygen criteria' and 'patient list based on novel MCDM method known as subjective and objective decision by opinion score method'. Then, the patients with the most urgent need are classified into the four blood types and matched with a tested CP list from the test phase in the donor side. Thereafter, the prioritisation of CP tested list is performed using the contracted CP decision matrix.
An intelligence-integrated concept is proposed to identify the most appropriate CP for corresponding prioritised patients with COVID-19 to help doctors hasten treatments.
The proposed framework implies the benefits of providing effective care and prevention of the extremely rapidly spreading COVID-19 from affecting patients and the medical sector.
近期从危及生命的 2019 冠状病毒病(COVID-19)中康复的人,其血液中存在针对循环冠状病毒的抗体。因此,将这些抗体输给病情恶化的患者,理论上可以帮助增强他们的免疫系统。从生物学角度来看,要想实现恢复期血浆(CP)输注以拯救最严重的 COVID-19 患者,需要克服两个挑战。首先,恢复期患者必须符合供血浆者选择标准,且必须符合国家卫生要求和已知的标准常规程序。其次,应考虑多准则决策(MCDM)问题,以选择最合适的 CP 并对 COVID-19 患者进行优先级排序。
本研究基于生物学要求,使用机器学习和新型 MCDM 方法,为 COVID-19 最危重患者输注最佳 CP 提出了一种救援框架。
该框架基于两个不同且连续的阶段(即测试和开发)进行说明。在测试阶段,通过将供体分为 A、B、AB 和 O 四种血型来评估 ABO 相容性,以指示用于管理的血浆的适用性和安全性,从而细化 CP 测试清单库。开发阶段包括患者和供体侧。在患者侧,使用在“血清学/蛋白质生物标志物与动脉血氧分压与吸入氧分数比值标准”和“基于新型 MCDM 方法即主观和客观意见评分法构建的患者名单”之间构建的有约束力的患者决策矩阵进行优先级排序。然后,根据需要将最紧急的患者分为四种血型,并在供体侧与测试阶段的 CP 测试清单相匹配。此后,使用有约束力的 CP 决策矩阵对 CP 测试清单进行优先级排序。
提出了一种智能集成概念,以确定最适合 COVID-19 对应优先级患者的 CP,帮助医生加快治疗速度。
该框架意味着提供有效护理和预防 COVID-19 迅速传播的好处,以避免患者和医疗部门受到影响。