Department of Pathology and Laboratory Medicine, UC Davis School of Medicine.
Cleveland Clinic.
Curr Opin Infect Dis. 2023 Aug 1;36(4):235-242. doi: 10.1097/QCO.0000000000000935. Epub 2023 Jun 6.
Immunocompromised patients are at high risk for infection. During the coronavirus disease (COVID-19) pandemic, immunocompromised patients exhibited increased odds of intensive care unit admission and death. Early pathogen identification is essential to mitigating infection related risk in immunocompromised patients. Artificial intelligence (AI) and machine learning (ML) have tremendous appeal to address unmet diagnostic needs. These AI/ML tools often rely on the wealth of data found in healthcare to enhance our ability to identify clinically significant patterns of disease. To this end, our review provides an overview of the current AI/ML landscape as it applies to infectious disease testing with emphasis on immunocompromised patients.
Examples include AI/ML for predicting sepsis in high risk burn patients. Likewise, ML is utilized to analyze complex host-response proteomic data to predict respiratory infections including COVID-19. These same approaches have also been applied for pathogen identification of bacteria, viruses, and hard to detect fungal microbes. Future uses of AI/ML may include integration of predictive analytics in point-of-care (POC) testing and data fusion applications.
Immunocompromised patients are at high risk for infections. AI/ML is transforming infectious disease testing and has great potential to address challenges encountered in the immune compromised population.
免疫功能低下的患者感染风险较高。在冠状病毒病(COVID-19)大流行期间,免疫功能低下的患者入住重症监护病房和死亡的几率增加。早期病原体识别对于减轻免疫功能低下患者的感染相关风险至关重要。人工智能(AI)和机器学习(ML)具有巨大的吸引力,可以满足未满足的诊断需求。这些 AI/ML 工具通常依赖于医疗保健中发现的大量数据,以增强我们识别疾病临床显著模式的能力。为此,我们的综述概述了当前 AI/ML 应用于传染病检测的现状,重点介绍了免疫功能低下患者。
例如,AI/ML 可用于预测高危烧伤患者的败血症。同样,ML 也用于分析复杂的宿主反应蛋白质组数据,以预测包括 COVID-19 在内的呼吸道感染。这些相同的方法也已应用于细菌、病毒和难以检测的真菌微生物的病原体识别。AI/ML 的未来用途可能包括将预测分析集成到即时检测(POC)测试和数据融合应用中。
免疫功能低下的患者感染风险较高。AI/ML 正在改变传染病检测,并且具有解决免疫功能低下人群所面临挑战的巨大潜力。