Mapping Patient Trajectories: Understanding and Visualizing Sepsis Prognostic Pathways from Patients Clinical Narratives
Journal:
arXiv
Published Date:
Jul 20, 2024
Abstract
In recent years, healthcare professionals are increasingly emphasizing on
personalized and evidence-based patient care through the exploration of
prognostic pathways. To study this, structured clinical variables from
Electronic Health Records (EHRs) data have traditionally been employed by many
researchers. Presently, Natural Language Processing models have received great
attention in clinical research which expanded the possibilities of using
clinical narratives. In this paper, we propose a systematic methodology for
developing sepsis prognostic pathways derived from clinical notes, focusing on
diverse patient subgroups identified by exploring comorbidities associated with
sepsis and generating explanations of these subgroups using SHAP. The extracted
prognostic pathways of these subgroups provide valuable insights into the
dynamic trajectories of sepsis severity over time. Visualizing these pathways
sheds light on the likelihood and direction of disease progression across
various contexts and reveals patterns and pivotal factors or biomarkers
influencing the transition between sepsis stages, whether toward deterioration
or improvement. This empowers healthcare providers to implement more
personalized and effective healthcare strategies for individual patients.