Development and Validation of Deep Learning Algorithms for Detection of Critical Findings in Head CT Scans
Sasank Chilamkurthy, Rohit Ghosh, Swetha Tanamala, Mustafa Biviji,, Norbert G. Campeau, Vasantha Kumar Venugopal, Vidur Mahajan, Pooja Rao,, Prashant Warier

TL;DR
This study developed and validated deep learning algorithms for automated detection of critical findings in head CT scans, achieving high accuracy across multiple hemorrhage types and structural abnormalities, thus aiding rapid diagnosis.
Contribution
The paper introduces a comprehensive set of deep learning algorithms validated on large, multi-center datasets for detecting key head CT findings, including hemorrhages and fractures.
Findings
High AUCs for hemorrhage detection (above 0.89)
Effective detection of fractures and midline shift with AUCs above 0.92
Validated algorithms across diverse datasets with consistent performance.
Abstract
Importance: Non-contrast head CT scan is the current standard for initial imaging of patients with head trauma or stroke symptoms. Objective: To develop and validate a set of deep learning algorithms for automated detection of following key findings from non-contrast head CT scans: intracranial hemorrhage (ICH) and its types, intraparenchymal (IPH), intraventricular (IVH), subdural (SDH), extradural (EDH) and subarachnoid (SAH) hemorrhages, calvarial fractures, midline shift and mass effect. Design and Settings: We retrospectively collected a dataset containing 313,318 head CT scans along with their clinical reports from various centers. A part of this dataset (Qure25k dataset) was used to validate and the rest to develop algorithms. Additionally, a dataset (CQ500 dataset) was collected from different centers in two batches B1 & B2 to clinically validate the algorithms. Main…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Advanced X-ray and CT Imaging · Radiomics and Machine Learning in Medical Imaging
