Fang Chih-Hao, Ravindra Vikram, Akhter Salma, Adibuzzaman Mohammad, Griffin Paul, Subramaniam Shankar, Grama Ananth
Department of Computer Science, Purdue University, West Lafayette, IN, United States of America.
Department of Computer Science, University of Cincinnati, Cincinnati, OH, United States of America.
PLOS Digit Health. 2022 Nov 10;1(11):e0000130. doi: 10.1371/journal.pdig.0000130. eCollection 2022 Nov.
Sepsis accounts for more than 50% of hospital deaths, and the associated cost ranks the highest among hospital admissions in the US. Improved understanding of disease states, progression, severity, and clinical markers has the potential to significantly improve patient outcomes and reduce cost. We develop a computational framework that identifies disease states in sepsis and models disease progression using clinical variables and samples in the MIMIC-III database. We identify six distinct patient states in sepsis, each associated with different manifestations of organ dysfunction. We find that patients in different sepsis states are statistically significantly composed of distinct populations with disparate demographic and comorbidity profiles. Our progression model accurately characterizes the severity level of each pathological trajectory and identifies significant changes in clinical variables and treatment actions during sepsis state transitions. Collectively, our framework provides a holistic view of sepsis, and our findings provide the basis for future development of clinical trials, prevention, and therapeutic strategies for sepsis.
脓毒症占医院死亡人数的50%以上,在美国,与之相关的费用在住院患者中排名最高。对疾病状态、进展、严重程度和临床标志物的深入了解有可能显著改善患者预后并降低成本。我们开发了一个计算框架,该框架使用MIMIC-III数据库中的临床变量和样本识别脓毒症中的疾病状态并对疾病进展进行建模。我们在脓毒症中识别出六种不同的患者状态,每种状态都与器官功能障碍的不同表现相关。我们发现,处于不同脓毒症状态的患者在统计学上显著地由具有不同人口统计学和合并症特征的不同人群组成。我们的进展模型准确地描述了每条病理轨迹的严重程度水平,并识别出脓毒症状态转变期间临床变量和治疗措施的显著变化。总体而言,我们的框架提供了脓毒症的整体视图,我们的研究结果为脓毒症的临床试验、预防和治疗策略的未来发展提供了基础。