Literature DB >> 30351253

Deep Learning for MR Angiography: Automated Detection of Cerebral Aneurysms.

Daiju Ueda1, Akira Yamamoto1, Masataka Nishimori1, Taro Shimono1, Satoshi Doishita1, Akitoshi Shimazaki1, Yutaka Katayama1, Shinya Fukumoto1, Antoine Choppin1, Yuki Shimahara1, Yukio Miki1.   

Abstract

Purpose To develop and evaluate a supportive algorithm using deep learning for detecting cerebral aneurysms at time-of-flight MR angiography to provide a second assessment of images already interpreted by radiologists. Materials and Methods MR images reported by radiologists to contain aneurysms were extracted from four institutions for the period from November 2006 through October 2017. The images were divided into three data sets: training data set, internal test data set, and external test data set. The algorithm was constructed by deep learning with the training data set, and its sensitivity to detect aneurysms in the test data sets was evaluated. To find aneurysms that had been overlooked in the initial reports, two radiologists independently performed a blinded interpretation of aneurysm candidates detected by the algorithm. When there was disagreement, the final diagnosis was made in consensus. The number of newly detected aneurysms was also evaluated. Results The training data set, which provided training and validation data, included 748 aneurysms (mean size, 3.1 mm ± 2.0 [standard deviation]) from 683 examinations; 318 of these examinations were on male patients (mean age, 63 years ± 13) and 365 were on female patients (mean age, 64 years ± 13). Test data were provided by the internal test data set (649 aneurysms [mean size, 4.1 mm ± 3.2] in 521 examinations, including 177 male patients and 344 female patients with mean age of 66 years ± 12 and 67 years ± 13, respectively) and the external test data set (80 aneurysms [mean size, 4.1 mm ± 2.1] in 67 examinations, including 19 male patients and 48 female patients with mean age of 63 years ± 12 and 68 years ± 12, respectively). The sensitivity was 91% (592 of 649) and 93% (74 of 80) for the internal and external test data sets, respectively. The algorithm improved aneurysm detection in the internal and external test data sets by 4.8% (31 of 649) and 13% (10 of 80), respectively, compared with the initial reports. Conclusion A deep learning algorithm detected cerebral aneurysms in radiologic reports with high sensitivity and improved aneurysm detection compared with the initial reports. © RSNA, 2018 See also the editorial by Flanders in this issue.

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Year:  2018        PMID: 30351253     DOI: 10.1148/radiol.2018180901

Source DB:  PubMed          Journal:  Radiology        ISSN: 0033-8419            Impact factor:   11.105


  25 in total

Review 1.  Artificial Intelligence in the Management of Intracranial Aneurysms: Current Status and Future Perspectives.

Authors:  Z Shi; B Hu; U J Schoepf; R H Savage; D M Dargis; C W Pan; X L Li; Q Q Ni; G M Lu; L J Zhang
Journal:  AJNR Am J Neuroradiol       Date:  2020-03-12       Impact factor: 3.825

Review 2.  Technical and clinical overview of deep learning in radiology.

Authors:  Daiju Ueda; Akitoshi Shimazaki; Yukio Miki
Journal:  Jpn J Radiol       Date:  2018-12-01       Impact factor: 2.374

3.  Virtual digital subtraction angiography using multizone patch-based U-Net.

Authors:  Ryusei Kimura; Atsushi Teramoto; Tomoyuki Ohno; Kuniaki Saito; Hiroshi Fujita
Journal:  Phys Eng Sci Med       Date:  2020-10-07

4.  Deep learning for automated cerebral aneurysm detection on computed tomography images.

Authors:  Xilei Dai; Lixiang Huang; Yi Qian; Shuang Xia; Winston Chong; Junjie Liu; Antonio Di Ieva; Xiaoxi Hou; Chubin Ou
Journal:  Int J Comput Assist Radiol Surg       Date:  2020-02-13       Impact factor: 2.924

5.  Machine Learning and Intracranial Aneurysms: From Detection to Outcome Prediction.

Authors:  Vittorio Stumpo; Victor E Staartjes; Giuseppe Esposito; Carlo Serra; Luca Regli; Alessandro Olivi; Carmelo Lucio Sturiale
Journal:  Acta Neurochir Suppl       Date:  2022

6.  Deep Learning-Based Software Improves Clinicians' Detection Sensitivity of Aneurysms on Brain TOF-MRA.

Authors:  B Sohn; K-Y Park; J Choi; J H Koo; K Han; B Joo; S Y Won; J Cha; H S Choi; S-K Lee
Journal:  AJNR Am J Neuroradiol       Date:  2021-08-12       Impact factor: 4.966

7.  Automated Aneurysm Detection: Emerging from the Shallow End of the Deep Learning Pool.

Authors:  David F Kallmes; Bradley J Erickson
Journal:  Radiology       Date:  2020-11-03       Impact factor: 11.105

8.  Deep neural network-based detection and segmentation of intracranial aneurysms on 3D rotational DSA.

Authors:  Xinke Liu; Junqiang Feng; Zhenzhou Wu; Zhonghao Neo; Chengcheng Zhu; Peifang Zhang; Yan Wang; Yuhua Jiang; Dimitrios Mitsouras; Youxiang Li
Journal:  Interv Neuroradiol       Date:  2021-03-09       Impact factor: 1.764

9.  Automated computer-assisted detection system for cerebral aneurysms in time-of-flight magnetic resonance angiography using fully convolutional network.

Authors:  Geng Chen; Xia Wei; Huang Lei; Yang Liqin; Li Yuxin; Dai Yakang; Geng Daoying
Journal:  Biomed Eng Online       Date:  2020-05-29       Impact factor: 2.819

10.  Deep Learning-Assisted Diagnosis of Cerebral Aneurysms Using the HeadXNet Model.

Authors:  Allison Park; Chris Chute; Pranav Rajpurkar; Joe Lou; Robyn L Ball; Katie Shpanskaya; Rashad Jabarkheel; Lily H Kim; Emily McKenna; Joe Tseng; Jason Ni; Fidaa Wishah; Fred Wittber; David S Hong; Thomas J Wilson; Safwan Halabi; Sanjay Basu; Bhavik N Patel; Matthew P Lungren; Andrew Y Ng; Kristen W Yeom
Journal:  JAMA Netw Open       Date:  2019-06-05
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