传染病控制中的人工智能-临床决策支持系统:利用机器学习对抗耐多药肺炎克雷伯氏菌

IF 2.9 3区 医学 Q2 INFECTIOUS DISEASES Infection and Drug Resistance Pub Date : 2024-07-10 DOI:10.2147/idr.s470821
Ming-Jr Jian, Tai-Han Lin, Hsing-Yi Chung, Chih-Kai Chang, Cherng-Lih Perng, Feng-Yee Chang, Hung-Sheng Shang
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引用次数: 0

摘要

目的:世界卫生组织已将肺炎克雷伯菌(KP)确定为全球公共卫生的重大威胁。耐碳青霉烯类肺炎克雷伯氏菌(CRKP)的威胁日益严重,导致住院时间延长和医疗费用增加,因此需要更快的诊断方法。传统的抗生素药敏试验(AST)方法至少需要 4 天时间,培养和分离细菌以及使用基质辅助激光解吸/电离飞行时间质谱(MALDI-TOF MS)鉴定菌种平均需要 3 天时间,再加上解释 AST 结果需要额外的一天时间。对于需要快速决策的紧急临床情况来说,这一漫长的过程使传统方法变得过于缓慢,可能会阻碍及时的治疗决策,尤其是对于快速传播的感染,如 CRKP 引起的感染。这项研究采用了一种利用人工智能-临床决策支持系统(AI-CDSS)的尖端诊断方法。它结合了机器学习算法,可快速、准确地检测出耐碳青霉烯类和耐可乐定菌株:由于担心多重耐药性问题,我们使用 MALDI-TOF MS 和 Vitek-2 系统从总共 52,827 份细菌样本中挑选了 4307 份 KP 样本进行 AST 检测。其中包括彻底的数据预处理、特征提取以及使用 GridSearchCV 和 5 倍交叉验证进行微调的机器学习模型训练,结果正如接收者操作特征和曲线下面积(AUC)得分所示,预测准确率很高,为我们的 AI-CDSS 奠定了基础:结果:MALDI-TOF MS 分析显示,CRKP 菌株和易感菌株以及耐大肠埃希菌肺炎克雷伯氏菌(CoRKP)菌株和易感菌株之间存在明显的强度差异。随机森林分类器显示出卓越的鉴别力,检测 CRKP 的 AUC 为 0.96,检测 CoRKP 的 AUC 为 0.98:将 MALDI-TOF MS 与 AI-CDSS 中的机器学习相结合,大大加快了 KP 耐药性的检测速度,缩短了约 1 天的时间。该系统提供了及时的指导,有可能加强临床决策并改善 KP 感染的治疗效果。 关键词:碳青霉烯类;可乐定;诊断准确性;抗生素管理;MALDI-TOF MS
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Artificial Intelligence-Clinical Decision Support System in Infectious Disease Control: Combatting Multidrug-Resistant Klebsiella pneumoniae with Machine Learning
Purpose: The World Health Organization has identified Klebsiella pneumoniae (KP) as a significant threat to global public health. The rising threat of carbapenem-resistant Klebsiella pneumoniae (CRKP) leads to prolonged hospital stays and higher medical costs, necessitating faster diagnostic methods. Traditional antibiotic susceptibility testing (AST) methods demand at least 4 days, requiring 3 days on average for culturing and isolating the bacteria and identifying the species using matrix-assisted laser desorption/ionization time-of-flight mass spectrometry (MALDI-TOF MS), plus an extra day for interpreting AST results. This lengthy process makes traditional methods too slow for urgent clinical situations requiring rapid decision-making, potentially hindering prompt treatment decisions, especially for fast-spreading infections such as those caused by CRKP. This research leverages a cutting-edge diagnostic method that utilizes an artificial intelligence-clinical decision support system (AI-CDSS). It incorporates machine learning algorithms for the swift and precise detection of carbapenem-resistant and colistin-resistant strains.
Patients and Methods: We selected 4307 KP samples out of a total of 52,827 bacterial samples due to concerns about multi-drug resistance using MALDI-TOF MS and Vitek-2 systems for AST. It involved thorough data preprocessing, feature extraction, and machine learning model training fine-tuned with GridSearchCV and 5-fold cross-validation, resulting in high predictive accuracy, as demonstrated by the receiver operating characteristic and area under the curve (AUC) scores, laying the groundwork for our AI-CDSS.
Results: MALDI-TOF MS analysis revealed distinct intensity profiles differentiating CRKP and susceptible strains, as well as colistin-resistant Klebsiella pneumoniae (CoRKP) and susceptible strains. The Random Forest Classifier demonstrated superior discriminatory power, with an AUC of 0.96 for detecting CRKP and 0.98 for detecting CoRKP.
Conclusion: Integrating MALDI-TOF MS with machine learning in an AI-CDSS has greatly expedited the detection of KP resistance by approximately 1 day. This system offers timely guidance, potentially enhancing clinical decision-making and improving treatment outcomes for KP infections.

Keywords: carbapenem, colistin, diagnostic accuracy, antibiotic stewardship, MALDI-TOF MS
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来源期刊
Infection and Drug Resistance
Infection and Drug Resistance Medicine-Pharmacology (medical)
CiteScore
5.60
自引率
7.70%
发文量
826
审稿时长
16 weeks
期刊介绍: About Journal Editors Peer Reviewers Articles Article Publishing Charges Aims and Scope Call For Papers ISSN: 1178-6973 Editor-in-Chief: Professor Suresh Antony An international, peer-reviewed, open access journal that focuses on the optimal treatment of infection (bacterial, fungal and viral) and the development and institution of preventative strategies to minimize the development and spread of resistance.
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