Seidlitz Silvia, Hölzl Katharina, von Garrel Ayca, Sellner Jan, Katzenschlager Stephan, Hölle Tobias, Fischer Dania, von der Forst Maik, Schmitt Felix C F, Studier-Fischer Alexander, Weigand Markus A, Maier-Hein Lena, Dietrich Maximilian
Division of Intelligent Medical Systems (IMSY), German Cancer Research Center (DKFZ), Heidelberg, Germany.
Helmholtz Information and Data Science School for Health, Heidelberg/Karlsruhe, Germany.
Sci Adv. 2025 Jul 18;11(29):eadw1968. doi: 10.1126/sciadv.adw1968.
With sepsis remaining a leading cause of mortality, early identification of patients with sepsis and those at high risk of death is a challenge of high socioeconomic importance. Given the potential of hyperspectral imaging (HSI) to monitor microcirculatory alterations, we propose a deep learning approach to automated sepsis diagnosis and mortality prediction using a single HSI cube acquired within seconds. In a prospective observational study, we collected HSI data from the palms and fingers of more than 480 intensive care unit patients. Neural networks applied to HSI measurements predicted sepsis and mortality with areas under the receiver operating characteristic curve (AUROCs) of 0.80 and 0.72, respectively. Performance improved substantially with additional clinical data, reaching AUROCs of 0.94 for sepsis and 0.83 for mortality. We conclude that deep learning-based HSI analysis enables rapid and noninvasive prediction of sepsis and mortality, with a potential clinical value for enhancing diagnosis and treatment.
由于脓毒症仍然是主要的死亡原因,早期识别脓毒症患者和高死亡风险患者是一项具有高度社会经济重要性的挑战。鉴于高光谱成像(HSI)监测微循环改变的潜力,我们提出一种深度学习方法,利用在数秒内获取的单个HSI立方体进行脓毒症自动诊断和死亡预测。在一项前瞻性观察研究中,我们收集了480多名重症监护病房患者手掌和手指的HSI数据。应用于HSI测量的神经网络预测脓毒症和死亡的受试者工作特征曲线下面积(AUROC)分别为0.80和0.72。额外的临床数据显著提高了预测性能,脓毒症的AUROC达到0.94,死亡的AUROC达到0.83。我们得出结论,基于深度学习的HSI分析能够快速、无创地预测脓毒症和死亡,对加强诊断和治疗具有潜在的临床价值。