Automated Pathology Detection and Patient Triage in Routinely Acquired Head Computed Tomography Scans. Issue 9 (6th September 2021)
- Record Type:
- Journal Article
- Title:
- Automated Pathology Detection and Patient Triage in Routinely Acquired Head Computed Tomography Scans. Issue 9 (6th September 2021)
- Main Title:
- Automated Pathology Detection and Patient Triage in Routinely Acquired Head Computed Tomography Scans
- Authors:
- Finck, Tom
Schinz, David
Grundl, Lioba
Eisawy, Rami
Yigitsoy, Mehmet
Moosbauer, Julia
Pfister, Franz
Wiestler, Benedikt - Abstract:
- Abstract : Supplemental digital content is available in the text. Abstract : Objectives: Anomaly detection systems can potentially uncover the entire spectrum of pathologies through deviations from a learned norm, meaningfully supporting the radiologist's workflow. We aim to report on the utility of a weakly supervised machine learning (ML) tool to detect pathologies in head computed tomography (CT) and adequately triage patients in an unselected patient cohort. Materials and Methods: All patients having undergone a head CT at a tertiary care hospital in March 2020 were eligible for retrospective analysis. Only the first scan of each patient was included. Anomaly detection was performed using a weakly supervised ML technique. Anomalous findings were displayed on voxel-level and pooled to an anomaly score ranging from 0 to 1. Thresholds for this score classified patients into the 3 classes: "normal, " "pathological, " or "inconclusive." Expert-validated radiological reports with multiclass pathology labels were considered as ground truth. Test assessment was performed with receiver operator characteristics analysis; inconclusive results were pooled to "pathological" predictions for accuracy measurements. External validity was tested in a publicly available external data set (CQ500). Results: During the investigation period, 297 patients were referred for head CT of which 248 could be included. Definite ratings into normal/pathological were feasible in 167 patients (67.3%); 81Abstract : Supplemental digital content is available in the text. Abstract : Objectives: Anomaly detection systems can potentially uncover the entire spectrum of pathologies through deviations from a learned norm, meaningfully supporting the radiologist's workflow. We aim to report on the utility of a weakly supervised machine learning (ML) tool to detect pathologies in head computed tomography (CT) and adequately triage patients in an unselected patient cohort. Materials and Methods: All patients having undergone a head CT at a tertiary care hospital in March 2020 were eligible for retrospective analysis. Only the first scan of each patient was included. Anomaly detection was performed using a weakly supervised ML technique. Anomalous findings were displayed on voxel-level and pooled to an anomaly score ranging from 0 to 1. Thresholds for this score classified patients into the 3 classes: "normal, " "pathological, " or "inconclusive." Expert-validated radiological reports with multiclass pathology labels were considered as ground truth. Test assessment was performed with receiver operator characteristics analysis; inconclusive results were pooled to "pathological" predictions for accuracy measurements. External validity was tested in a publicly available external data set (CQ500). Results: During the investigation period, 297 patients were referred for head CT of which 248 could be included. Definite ratings into normal/pathological were feasible in 167 patients (67.3%); 81 scans (32.7%) remained inconclusive. The area under the curve to differentiate normal from pathological scans was 0.95 (95% confidence interval, 0.92–0.98) for the study data set and 0.87 (95% confidence interval, 0.81–0.94) in external validation. The negative predictive value to exclude pathology if a scan was classified as "normal" was 100% (25/25), and the positive predictive value was 97.6% (137/141). Sensitivity and specificity were 100% and 86%, respectively. In patients with inconclusive ratings, pathologies were found in 26 (63%) of 41 cases. Conclusions: Our study provides the first clinical evaluation of a weakly supervised anomaly detection system for brain imaging. In an unselected, consecutive patient cohort, definite classification into normal/diseased was feasible in approximately two thirds of scans, going along with an excellent diagnostic accuracy and perfect negative predictive value for excluding pathology. Moreover, anomaly heat maps provide important guidance toward pathology interpretation, also in cases with inconclusive ratings. … (more)
- Is Part Of:
- Investigative radiology. Volume 56:Issue 9(2021)
- Journal:
- Investigative radiology
- Issue:
- Volume 56:Issue 9(2021)
- Issue Display:
- Volume 56, Issue 9 (2021)
- Year:
- 2021
- Volume:
- 56
- Issue:
- 9
- Issue Sort Value:
- 2021-0056-0009-0000
- Page Start:
- 571
- Page End:
- 578
- Publication Date:
- 2021-09-06
- Subjects:
- deep learning -- machine learning -- artificial intelligence -- computer-aided diagnosis -- computed tomography -- head CT
Diagnosis, Radioscopic -- Periodicals
Radiology, Medical -- Periodicals
616.0757 - Journal URLs:
- http://journals.lww.com/investigativeradiology/pages/default.aspx ↗
http://journals.lww.com ↗ - DOI:
- 10.1097/RLI.0000000000000775 ↗
- Languages:
- English
- ISSNs:
- 0020-9996
- Deposit Type:
- Legaldeposit
- View Content:
- Available online (eLD content is only available in our Reading Rooms) ↗
- Physical Locations:
- British Library DSC - 4560.350000
British Library DSC - BLDSS-3PM
British Library HMNTS - ELD Digital store - Ingest File:
- 19785.xml