Gupta Jyotirmoy, Majumder Amit Kumar, Sengupta Diganta, Sultana Mahamuda, Bhattacharya Suman
Department of Computer Science and Engineering (IOTCSBT), Future Institute of Technology, Kolkata, West Bengal, India.
Department of Electronics and Communications Engineering, Future Institute of Technology, Kolkata, West Bengal, India.
J Intensive Med. 2024 Jul 10;4(4):468-477. doi: 10.1016/j.jointm.2024.04.006. eCollection 2024 Oct.
This study investigates the use of computational frameworks for sepsis. We consider two dimensions for investigation - early diagnosis of sepsis (EDS) and mortality prediction rate for sepsis patients (MPS). We concentrate on the clinical parameters on which sepsis diagnosis and prognosis are currently done, including customized treatment plans based on historical data of the patient. We identify the most notable literature that uses computational models to address EDS and MPS based on those clinical parameters. In addition to the review of the computational models built upon the clinical parameters, we also provide details regarding the popular publicly available data sources. We provide brief reviews for each model in terms of prior art and present an analysis of their results, as claimed by the respective authors. With respect to the use of machine learning models, we have provided avenues for model analysis in terms of model selection, model validation, model interpretation, and model comparison. We further present the challenges and limitations of the use of computational models, providing future research directions. This study intends to serve as a benchmark for first-hand impressions on the use of computational models for EDS and MPS of sepsis, along with the details regarding which model has been the most promising to date. We have provided details regarding all the ML models that have been used to date for EDS and MPS of sepsis.
本研究调查了用于脓毒症的计算框架的使用情况。我们考虑两个调查维度——脓毒症的早期诊断(EDS)和脓毒症患者的死亡率预测率(MPS)。我们专注于目前用于脓毒症诊断和预后的临床参数,包括基于患者历史数据的定制治疗方案。我们确定了基于这些临床参数使用计算模型来解决EDS和MPS的最显著文献。除了对基于临床参数构建的计算模型进行综述外,我们还提供了有关流行的公开可用数据源的详细信息。我们根据现有技术对每个模型进行简要综述,并按照各自作者的说法对其结果进行分析。关于机器学习模型的使用,我们在模型选择、模型验证、模型解释和模型比较方面提供了模型分析的途径。我们进一步阐述了使用计算模型的挑战和局限性,并提供了未来的研究方向。本研究旨在作为对用于脓毒症的EDS和MPS的计算模型的第一手印象的基准,以及关于迄今为止哪个模型最有前景的详细信息。我们提供了迄今为止用于脓毒症的EDS和MPS的所有机器学习模型的详细信息。