ADVANCING THE UNDERSTANDING OF CLINICAL SEPSIS USING GENE EXPRESSION–DRIVEN MACHINE LEARNING TO IMPROVE PATIENT OUTCOMES

Author:

Rashid Asrar,Al-Obeidat Feras1,Hafez Wael,Benakatti Govind2,Malik Rayaz A.,Koutentis Christos3,Sharief Javed4,Brierley Joe5,Quraishi Nasir6,Malik Zainab A.7,Anwary Arif8,Alkhzaimi Hoda9,Zaki Syed Ahmed10,Khilnani Praveen11,Kadwa Raziya3,Phatak Rajesh12,Schumacher Maike13,Shaikh M. Guftar14,Al-Dubai Ahmed8,Hussain Amir8

Affiliation:

1. College of Technological Innovation Zayed University, Abu Dhabi, UAE

2. Yas Clinic, Abu Dhabi, UAE

3. Department of Anesthesiology, SUNY Downstate Medical Center, Brooklyn, New York

4. NMC Royal Hospital, Khalifa, Abu Dhabi, UAE

5. University College London, NIHR Great Ormond Street Hospital Biomedical Research Centre, London, UK

6. Centre for Spinal Studies & Surgery, Queen’s Medical Centre; The University of Nottingham, Nottingham, UK

7. College of Medicine, Mohammed Bin Rashid University of Medicine and Health Sciences, Dubai, U.A.E

8. School of Computing, Edinburgh Napier University, Edinburgh, UK

9. New York University, Abu Dhabi, UAE

10. All India Institute of Medical Sciences, Bibinagar, Hyderabad, India

11. Medanta Gururam, Delhi, India

12. Pediatric Intensive Care, Burjeel Hospital, Najda, Abu Dhabi

13. Sheikh Khalifa Medical City, Abu Dhabi, UAE

14. Department of Paediatric Endocrinology, Royal Hospital for Children, Glasgow, UK

Abstract

ABSTRACT Sepsis remains a major challenge that necessitates improved approaches to enhance patient outcomes. This study explored the potential of machine learning (ML) techniques to bridge the gap between clinical data and gene expression information to better predict and understand sepsis. We discuss the application of ML algorithms, including neural networks, deep learning, and ensemble methods, to address key evidence gaps and overcome the challenges in sepsis research. The lack of a clear definition of sepsis is highlighted as a major hurdle, but ML models offer a workaround by focusing on endpoint prediction. We emphasize the significance of gene transcript information and its use in ML models to provide insights into sepsis pathophysiology and biomarker identification. Temporal analysis and integration of gene expression data further enhance the accuracy and predictive capabilities of ML models for sepsis. Although challenges such as interpretability and bias exist, ML research offers exciting prospects for addressing critical clinical problems, improving sepsis management, and advancing precision medicine approaches. Collaborative efforts between clinicians and data scientists are essential for the successful implementation and translation of ML models into clinical practice. Machine learning has the potential to revolutionize our understanding of sepsis and significantly improve patient outcomes. Further research and collaboration between clinicians and data scientists are needed to fully understand the potential of ML in sepsis management.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Subject

Critical Care and Intensive Care Medicine,Emergency Medicine

Reference49 articles.

1. The third international consensus definitions for sepsis and septic shock (Sepsis-3);JAMA,2016

2. Leukocyte phenotyping in sepsis using omics, functional analysis, and in silico modeling;Shock,2023

3. Transcriptional instability during evolving sepsis may limit biomarker based risk stratification;PLoS One,2013

4. Application of a gene modular approach for clinical phenotype genotype association and sepsis prediction using machine learning in meningococcal sepsis;Inform Med Unlocked,2023

5. Defining sepsis phenotypes—two murine models of sepsis and machine learning;Shock,2022

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