A transformer-based deep learning model for identifying the occurrence of acute hematogenous osteomyelitis and predicting blood culture results.

IF 4 2区 生物学 Q2 MICROBIOLOGY
Frontiers in Microbiology Pub Date : 2024-11-06 eCollection Date: 2024-01-01 DOI:10.3389/fmicb.2024.1495709
Yingtu Xia, Qiang Kang, Yi Gao, Jiuhui Su
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引用次数: 0

Abstract

Background: Acute hematogenous osteomyelitis is the most common form of osteomyelitis in children. In recent years, the incidence of osteomyelitis has been steadily increasing. For pediatric patients, clearly describing their symptoms can be quite challenging, which often necessitates the use of complex diagnostic methods, such as radiology. For those who have been diagnosed, the ability to culture the pathogenic bacteria significantly affects their treatment plan.

Method: A total of 634 patients under the age of 18 were included, and the correlation between laboratory indicators and osteomyelitis, as well as several diagnoses often confused with osteomyelitis, was analyzed. Based on this, a Transformer-based deep learning model was developed to identify osteomyelitis patients. Subsequently, the correlation between laboratory indicators and the length of hospital stay for osteomyelitis patients was examined. Finally, the correlation between the successful cultivation of pathogenic bacteria and laboratory indicators in osteomyelitis patients was analyzed, and a deep learning model was established for prediction.

Result: The laboratory indicators of patients are correlated with the presence of acute hematogenous osteomyelitis, and the deep learning model developed based on this correlation can effectively identify patients with acute hematogenous osteomyelitis. The laboratory indicators of patients with acute hematogenous osteomyelitis can partially reflect their length of hospital stay. Although most laboratory indicators lack a direct correlation with the ability to culture pathogenic bacteria in patients with acute hematogenous osteomyelitis, our model can still predict whether the bacteria can be successfully cultured.

Conclusion: Laboratory indicators, as easily accessible medical information, can identify osteomyelitis in pediatric patients. They can also predict whether pathogenic bacteria can be successfully cultured, regardless of whether the patient has received antibiotics beforehand. This not only simplifies the diagnostic process for pediatricians but also provides a basis for deciding whether to use empirical antibiotic therapy or discontinue treatment for blood cultures.

基于变换器的深度学习模型,用于识别急性血源性骨髓炎的发生并预测血液培养结果。
背景:急性血源性骨髓炎是儿童骨髓炎中最常见的一种。近年来,骨髓炎的发病率稳步上升。对于儿科患者来说,清楚地描述自己的症状可能相当具有挑战性,这往往需要使用复杂的诊断方法,如放射学。对于那些已经确诊的患者,能否培养出致病菌对他们的治疗方案有很大影响:方法:共纳入 634 名 18 岁以下患者,分析实验室指标与骨髓炎之间的相关性,以及经常与骨髓炎混淆的几种诊断。在此基础上,开发了基于 Transformer 的深度学习模型来识别骨髓炎患者。随后,研究了骨髓炎患者的实验室指标与住院时间之间的相关性。最后,分析了骨髓炎患者成功培养病原菌与实验室指标之间的相关性,并建立了深度学习模型进行预测:结果:患者的实验室指标与急性血源性骨髓炎存在相关性,基于这种相关性建立的深度学习模型能有效识别急性血源性骨髓炎患者。急性血源性骨髓炎患者的实验室指标可以部分反映其住院时间。虽然大多数实验室指标与急性血源性骨髓炎患者培养病原菌的能力缺乏直接相关性,但我们的模型仍能预测细菌是否能被成功培养出来:结论:实验室指标作为易于获取的医疗信息,可以识别儿科患者的骨髓炎。结论:实验室指标作为易于获取的医疗信息,可以识别儿科患者的骨髓炎,还能预测是否能成功培养出致病细菌,而不管患者之前是否接受过抗生素治疗。这不仅简化了儿科医生的诊断过程,还为决定是否使用经验性抗生素治疗或停止血培养治疗提供了依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.70
自引率
9.60%
发文量
4837
审稿时长
14 weeks
期刊介绍: Frontiers in Microbiology is a leading journal in its field, publishing rigorously peer-reviewed research across the entire spectrum of microbiology. Field Chief Editor Martin G. Klotz at Washington State University is supported by an outstanding Editorial Board of international researchers. This multidisciplinary open-access journal is at the forefront of disseminating and communicating scientific knowledge and impactful discoveries to researchers, academics, clinicians and the public worldwide.
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