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Incorporating Algorithmic Uncertainty into a Clinical Machine Deep Learning Algorithm for Urgent Head CTs
0
Zitationen
21
Autoren
2022
Jahr
Abstract
Abstract Machine learning (ML) algorithms to detect critical findings on head CTs may expedite patient management. Most ML algorithms for diagnostic imaging analysis utilize dichotomous classifications to determine whether a specific abnormality is present. However, imaging findings may be indeterminate, and algorithmic inferences may have substantial uncertainty. We incorporated awareness of uncertainty into an ML algorithm that detects intracranial hemorrhage or other urgent intracranial abnormalities and evaluated prospectively identified, 1000 consecutive noncontrast head CTs assigned to Emergency Department Neuroradiology for interpretation. The algorithm classified the scans into high (IC+) and low (IC-) probabilities for intracranial hemorrhage or other urgent abnormalities. All other cases were designated as No Prediction (NP) by the algorithm. The positive predictive value for IC+ cases (N = 103) was 0.91 (CI: 0.84-0.96), and the negative predictive value for IC-cases (N = 729) was 0.94 (0.91-0.96). Admission, neurosurgical intervention, and 30-day mortality rates for IC+ was 75% (63-84), 35% (24-47), and 10% (4-20), compared to 43% (40-47), 4% (3-6), and 3% (2-5) for IC-. There were 168 NP cases, of which 32% had intracranial hemorrhage or other urgent abnormalities, 31% had artifacts and postoperative changes, and 29% had no abnormalities. An ML algorithm incorporating uncertainty classified most head CTs into clinically relevant groups with high predictive values and may help accelerate the management of patients with intracranial hemorrhage or other urgent intracranial abnormalities.
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Autoren
- Byung Chul Yoon
- Stuart R. Pomerantz
- Nathaniel D. Mercaldo
- Swati Goyal
- Eric L’Italien
- Michael H. Lev
- Karen Buch
- Bradley R. Buchbinder
- John W. Chen
- John Conklin
- Rajiv Gupta
- George J. Hunter
- Shahmir M. Kamalian
- Hillary R. Kelly
- Otto Rapalino
- Sandra Rincon
- Javier M. Romero
- Julian He
- Pamela W. Schaefer
- Synho Do
- Ramón González
Institutionen
- Harvard University(US)
- Massachusetts General Hospital(US)
- Stanford Health Care(US)
- Office of Science(US)
- Mass General Brigham(US)
- Center for Assessment(US)
- Center for Systems Biology(US)
- Integra (United States)(US)
- Massachusetts Eye and Ear Infirmary(US)
- Athinoula A. Martinos Center for Biomedical Imaging(US)