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Erschienen in: European Radiology 11/2020

30.05.2020 | Magnetic Resonance

A deep learning algorithm may automate intracranial aneurysm detection on MR angiography with high diagnostic performance

verfasst von: Bio Joo, Sung Soo Ahn, Pyeong Ho Yoon, Sohi Bae, Beomseok Sohn, Yong Eun Lee, Jun Ho Bae, Moo Sung Park, Hyun Seok Choi, Seung-Koo Lee

Erschienen in: European Radiology | Ausgabe 11/2020

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Abstract

Objectives

To develop a deep learning algorithm for automated detection and localization of intracranial aneurysms on time-of-flight MR angiography and evaluate its diagnostic performance.

Methods

In a retrospective and multicenter study, MR images with aneurysms based on radiological reports were extracted. The examinations were randomly divided into two data sets: training set of 468 examinations and internal test set of 120 examinations. Additionally, 50 examinations without aneurysms were randomly selected and added to the internal test set. External test data set consisted of 56 examinations with intracranial aneurysms and 50 examinations without aneurysms, which were extracted based on radiological reports from a different institution. After manual ground truth segmentation of aneurysms, a deep learning algorithm based on 3D ResNet architecture was established with the training set. Its sensitivity, positive predictive value, and specificity were evaluated in the internal and external test sets.

Results

MR images included 551 aneurysms (mean diameter, 4.17 ± 2.49 mm) in the training, 147 aneurysms (mean diameter, 3.98 ± 2.11 mm) in the internal test, 63 aneurysms (mean diameter, 3.23 ± 1.69 mm) in the external test sets. The sensitivity, the positive predictive value, and the specificity were 87.1%, 92.8%, and 92.0% for the internal test set and 85.7%, 91.5%, and 98.0% for the external test set, respectively.

Conclusion

A deep learning algorithm detected intracranial aneurysms with a high diagnostic performance which was validated using external data set.

Key Points

• A deep learning-based algorithm for the automated diagnosis of intracranial aneurysms demonstrated a high sensitivity, positive predictive value, and specificity.
• The high diagnostic performance of the algorithm was validated using external test data set from a different institution with a different scanner.
• The algorithm might be robust and effective for general use in real clinical settings.
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Metadaten
Titel
A deep learning algorithm may automate intracranial aneurysm detection on MR angiography with high diagnostic performance
verfasst von
Bio Joo
Sung Soo Ahn
Pyeong Ho Yoon
Sohi Bae
Beomseok Sohn
Yong Eun Lee
Jun Ho Bae
Moo Sung Park
Hyun Seok Choi
Seung-Koo Lee
Publikationsdatum
30.05.2020
Verlag
Springer Berlin Heidelberg
Erschienen in
European Radiology / Ausgabe 11/2020
Print ISSN: 0938-7994
Elektronische ISSN: 1432-1084
DOI
https://doi.org/10.1007/s00330-020-06966-8

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