Laboratory of Emerging Infectious Diseases, Department of Immunology and Microbiology, Dalhousie University, Halifax, NS, Canada.
Department of Pediatrics, Izaak Walton Killan (IWK) Health Center, CCfV, Halifax, NS, Canada.
Front Immunol. 2023 Mar 9;14:1137850. doi: 10.3389/fimmu.2023.1137850. eCollection 2023.
Millions of deaths worldwide are a result of sepsis (viral and bacterial) and septic shock syndromes which originate from microbial infections and cause a dysregulated host immune response. These diseases share both clinical and immunological patterns that involve a plethora of biomarkers that can be quantified and used to explain the severity level of the disease. Therefore, we hypothesize that the severity of sepsis and septic shock in patients is a function of the concentration of biomarkers of patients.
In our work, we quantified data from 30 biomarkers with direct immune function. We used distinct Feature Selection algorithms to isolate biomarkers to be fed into machine learning algorithms, whose mapping of the decision process would allow us to propose an early diagnostic tool.
We isolated two biomarkers, i.e., Programmed Death Ligand-1 and Myeloperoxidase, that were flagged by the interpretation of an Artificial Neural Network. The upregulation of both biomarkers was indicated as contributing to increase the severity level in sepsis (viral and bacterial induced) and septic shock patients.
In conclusion, we built a function considering biomarker concentrations to explain severity among sepsis, sepsis COVID, and septic shock patients. The rules of this function include biomarkers with known medical, biological, and immunological activity, favoring the development of an early diagnosis system based in knowledge extracted from artificial intelligence.
全球数百万人的死亡是由脓毒症(病毒和细菌)和脓毒性休克综合征引起的,这些疾病源于微生物感染,导致宿主免疫反应失调。这些疾病具有共同的临床和免疫模式,涉及大量可量化的生物标志物,可用于解释疾病的严重程度。因此,我们假设患者脓毒症和脓毒性休克的严重程度是患者生物标志物浓度的函数。
在我们的工作中,我们对 30 种具有直接免疫功能的生物标志物进行了定量分析。我们使用不同的特征选择算法来分离生物标志物,并将其输入机器学习算法,其决策过程的映射将使我们能够提出一种早期诊断工具。
我们分离出了两种生物标志物,即程序性死亡配体 1 和髓过氧化物酶,它们被人工神经网络的解释标记出来。这两种生物标志物的上调都表明有助于增加脓毒症(病毒和细菌引起)和脓毒性休克患者的严重程度。
总之,我们构建了一个考虑生物标志物浓度的函数来解释脓毒症、COVID 相关性脓毒症和脓毒性休克患者的严重程度。该函数的规则包括具有已知医学、生物学和免疫学活性的生物标志物,有利于开发基于从人工智能中提取的知识的早期诊断系统。