Luellen Eric
Bioinformatix Interlochen, MI United States.
JMIRx Med. 2020 Oct 19;1(1):e23582. doi: 10.2196/23582. eCollection 2020 Jan-Dec.
Approximately 80% of those infected with COVID-19 are immune. They are asymptomatic unknown carriers who can still infect those with whom they come into contact. Understanding what makes them immune could inform public health policies as to who needs to be protected and why, and possibly lead to a novel treatment for those who cannot, or will not, be vaccinated once a vaccine is available.
The primary objectives of this study were to learn if machine learning could identify patterns in the pathogen-host immune relationship that differentiate or predict COVID-19 symptom immunity and, if so, which ones and at what levels. The secondary objective was to learn if machine learning could take such differentiators to build a model that could predict COVID-19 immunity with clinical accuracy. The tertiary purpose was to learn about the relevance of other immune factors.
This was a comparative effectiveness research study on 53 common immunological factors using machine learning on clinical data from 74 similarly grouped Chinese COVID-19-positive patients, 37 of whom were symptomatic and 37 asymptomatic. The setting was a single-center primary care hospital in the Wanzhou District of China. Immunological factors were measured in patients who were diagnosed as SARS-CoV-2 positive by reverse transcriptase-polymerase chain reaction (RT-PCR) in the 14 days before observations were recorded. The median age of the 37 asymptomatic patients was 41 years (range 8-75 years); 22 were female, 15 were male. For comparison, 37 RT-PCR test-positive patients were selected and matched to the asymptomatic group by age, comorbidities, and sex. Machine learning models were trained and compared to understand the pathogen-immune relationship and predict who was immune to COVID-19 and why, using the statistical programming language R.
When stem cell growth factor-beta (SCGF-β) was included in the machine learning analysis, a decision tree and extreme gradient boosting algorithms classified and predicted COVID-19 symptom immunity with 100% accuracy. When SCGF-β was excluded, a random-forest algorithm classified and predicted asymptomatic and symptomatic cases of COVID-19 with 94.8% AUROC (area under the receiver operating characteristic) curve accuracy (95% CI 90.17%-100%). In total, 34 common immune factors have statistically significant associations with COVID-19 symptoms (all c<.05), and 19 immune factors appear to have no statistically significant association.
The primary outcome was that asymptomatic patients with COVID-19 could be identified by three distinct immunological factors and levels: SCGF-β (>127,637), interleukin-16 (IL-16) (>45), and macrophage colony-stimulating factor (M-CSF) (>57). The secondary study outcome was the suggestion that stem-cell therapy with SCGF-β may be a novel treatment for COVID-19. Individuals with an SCGF-β level >127,637, or an IL-16 level >45 and an M-CSF level >57, appear to be predictively immune to COVID-19 100% and 94.8% (AUROC) of the time, respectively. Testing levels of these three immunological factors may be a valuable tool at the point of care for managing and preventing outbreaks. Further, stem-cell therapy via SCGF-β and M-CSF appear to be promising novel therapeutics for patients with COVID-19.
感染新冠病毒的人群中约80%具有免疫力。他们是无症状的未知携带者,仍可将病毒传染给与其接触的人。了解使他们产生免疫的因素,可为公共卫生政策提供依据,明确哪些人需要保护以及原因,并且一旦有疫苗可用,可能会为那些无法或不愿接种疫苗的人带来新的治疗方法。
本研究的主要目的是了解机器学习能否识别病原体与宿主免疫关系中的模式,以区分或预测新冠病毒症状免疫情况,如果可以,是哪些模式以及在何种水平上。次要目的是了解机器学习能否利用这些区分因素构建一个能够以临床准确性预测新冠病毒免疫情况的模型。第三个目的是了解其他免疫因素的相关性。
这是一项关于53种常见免疫因素的比较有效性研究,对来自74名分组相似的中国新冠病毒阳性患者的临床数据进行机器学习分析,其中37人有症状,37人无症状。研究地点是中国万州区的一家单中心基层医疗医院。在记录观察结果前14天内,对经逆转录聚合酶链反应(RT-PCR)诊断为新冠病毒阳性的患者进行免疫因素检测。37名无症状患者的中位年龄为41岁(范围8 - 75岁);22名女性,15名男性。作为对照,选取37名RT-PCR检测呈阳性的患者,并按年龄、合并症和性别与无症状组进行匹配。使用统计编程语言R对机器学习模型进行训练和比较,以了解病原体与免疫的关系,并预测谁对新冠病毒具有免疫力以及原因。
当将干细胞生长因子-β(SCGF-β)纳入机器学习分析时,决策树和极端梯度提升算法对新冠病毒症状免疫情况的分类和预测准确率为100%。排除SCGF-β后,随机森林算法对新冠病毒无症状和有症状病例的分类和预测准确率为94.8%(受试者工作特征曲线下面积,AUROC)(95%置信区间90.17% - 100%)。总共有34种常见免疫因素与新冠病毒症状存在统计学显著关联(所有P <.05),19种免疫因素似乎无统计学显著关联。
主要结果是,可通过三种不同的免疫因素及水平识别新冠病毒无症状患者:SCGF-β(>127,637)、白细胞介素-16(IL-16)(>45)和巨噬细胞集落刺激因子(M-CSF)(>57)。次要研究结果表明,使用SCGF-β进行干细胞治疗可能是新冠病毒的一种新疗法。SCGF-β水平>127,637或IL-16水平>45且M-CSF水平>57的个体,似乎分别有100%和94.8%(AUROC)的概率对新冠病毒具有预测性免疫力。检测这三种免疫因素的水平可能是在医疗现场管理和预防疫情爆发的有价值工具。此外,通过SCGF-β和M-CSF进行干细胞治疗似乎是新冠病毒患者有前景的新疗法。