Prospective Real-Time Validation of a Lung Ultrasound Deep Learning Model in the ICU

Author:

Dave Chintan1,Wu Derek2,Tschirhart Jared2,Smith Delaney3,VanBerlo Blake3,Deglint Jason4,Ali Faraz5,Chaudhary Rushil2,VanBerlo Bennett6,Ford Alex7,Rahman Marwan A.7,McCauley Joseph5,Wu Benjamin7,Ho Jordan2,Li Brian5,Arntfield Robert1

Affiliation:

1. Division of Critical Care Medicine, Western University, London, ON, Canada.

2. Schulich School of Medicine and Dentistry, Western University, London, ON, Canada.

3. Faculty of Mathematics, University of Waterloo, Waterloo, ON, Canada.

4. Department of Computer Science, University of Waterloo, Waterloo, ON, Canada.

5. Faculty of Engineering, University of Waterloo, Waterloo, ON, Canada.

6. Faculty of Engineering, University of Western Ontario, London, ON, Canada.

7. Lawson Health Research Institute, Western University, London, ON, Canada.

Abstract

OBJECTIVES: To evaluate the accuracy of a bedside, real-time deployment of a deep learning (DL) model capable of distinguishing between normal (A line pattern) and abnormal (B line pattern) lung parenchyma on lung ultrasound (LUS) in critically ill patients. DESIGN: Prospective, observational study evaluating the performance of a previously trained LUS DL model. Enrolled patients received a LUS examination with simultaneous DL model predictions using a portable device. Clip-level model predictions were analyzed and compared with blinded expert review for A versus B line pattern. Four prediction thresholding approaches were applied to maximize model sensitivity and specificity at bedside. SETTING: Academic ICU. PATIENTS: One-hundred critically ill patients admitted to ICU, receiving oxygen therapy, and eligible for respiratory imaging were included. Patients who were unstable or could not undergo an LUS examination were excluded. INTERVENTIONS: None. MEASUREMENTS AND MAIN RESULTS: A total of 100 unique ICU patients (400 clips) were enrolled from two tertiary-care sites. Fifty-six patients were mechanically ventilated. When compared with gold standard expert annotation, the real-time inference yielded an accuracy of 95%, sensitivity of 93%, and specificity of 96% for identification of the B line pattern. Varying prediction thresholds showed that real-time modification of sensitivity and specificity according to clinical priorities is possible. CONCLUSIONS: A previously validated DL classification model performs equally well in real-time at the bedside when platformed on a portable device. As the first study to test the feasibility and performance of a DL classification model for LUS in a dedicated ICU environment, our results justify further inquiry into the impact of employing real-time automation of medical imaging into the care of the critically ill.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Subject

Critical Care and Intensive Care Medicine

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