Literature DB >> 31288671

Prediction of Aneurysm Stability Using a Machine Learning Model Based on PyRadiomics-Derived Morphological Features.

QingLin Liu1,2, Peng Jiang1, YuHua Jiang1,2, HuiJian Ge1,2, ShaoLin Li1, HengWei Jin1,2, YouXiang Li1,2.   

Abstract

Background and Purpose- Discrimination of the stability of intracranial aneurysms is critical for determining the treatment strategy, especially in small aneurysms. This study aims to evaluate the feasibility of applying machine learning for predicting aneurysm stability with radiomics-derived morphological features. Methods- Morphological features of 719 aneurysms were extracted from PyRadiomics, of which 420 aneurysms with Maximum3DDiameter ranging from 4 mm to 8 mm were enrolled for analysis. The stability of these aneurysms and other clinical characteristics were reviewed from the medical records. Based on the morphologies with/without clinical features, machine learning models were constructed and compared to define the morphological determinants and screen the optimal model for predicting aneurysm stability. The effect of clinical characteristics on the morphology of unstable aneurysms was analyzed. Results- Twelve morphological features were automatically extracted from PyRadiomics implemented in Python for each aneurysm. Lasso regression defined Flatness as the most important morphological feature to predict aneurysm stability, followed by SphericalDisproportion, Maximum2DDiameterSlice, and SurfaceArea. SurfaceArea (odds ratio [OR], 0.697; 95% CI, 0.476-0.998), SphericalDisproportion (OR, 1.730; 95% CI, 1.143-2.658), Flatness (OR, 0.584; 95% CI, 0.374-0.894), Hyperlipemia (OR, 2.410; 95% CI, 1.029-5.721), Multiplicity (OR, 0.182; 95% CI, 0.082-0.380), Location at middle cerebral artery (OR, 0.359; 95% CI, 0.134-0.902), and internal carotid artery (OR, 0.087; 95% CI, 0.030-0.211) were enrolled into the final prediction model. In terms of performance, the area under curve of the model reached 0.853 (95% CI, 0.767-0.940). For unstable aneurysms, Compactness1 (P=0.035), Compactness2 (P=0.036), Sphericity (P=0.035), and Flatness (P=0.010) were low, whereas SphericalDisproportion (P=0.034) was higher in patients with hypertension. Conclusions- Morphological features extracted from PyRadiomics can be used for aneurysm stratification. Flatness is the most important morphological determinant to predict aneurysm stability. Our model can be used to predict aneurysm stability. Unstable aneurysm is more irregular in patients with hypertension.

Entities:  

Keywords:  humans; hypertension; intracranial aneurysm; odds ratio; risk assessment

Year:  2019        PMID: 31288671     DOI: 10.1161/STROKEAHA.119.025777

Source DB:  PubMed          Journal:  Stroke        ISSN: 0039-2499            Impact factor:   7.914


  17 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

2.  Relationship between 3D Morphologic Change and 2D and 3D Growth of Unruptured Intracranial Aneurysms.

Authors:  K M Timmins; H J Kuijf; M D I Vergouwen; Y M Ruigrok; B K Velthuis; I C van der Schaaf
Journal:  AJNR Am J Neuroradiol       Date:  2022-02-10       Impact factor: 3.825

3.  Interpretable machine learning model to predict rupture of small intracranial aneurysms and facilitate clinical decision.

Authors:  WeiGen Xiong; TingTing Chen; Jun Li; Lan Xiang; Cheng Zhang; Liang Xiang; YingBin Li; Dong Chu; YueZhang Wu; Qiong Jie; RunZe Qiu; ZeYue Xu; JianJun Zou; HongWei Fan; ZhiHong Zhao
Journal:  Neurol Sci       Date:  2022-08-23       Impact factor: 3.830

4.  Classifying Ruptured Middle Cerebral Artery Aneurysms With a Machine Learning Based, Radiomics-Morphological Model: A Multicentral Study.

Authors:  Dongqin Zhu; Yongchun Chen; Kuikui Zheng; Chao Chen; Qiong Li; Jiafeng Zhou; Xiufen Jia; Nengzhi Xia; Hao Wang; Boli Lin; Yifei Ni; Peipei Pang; Yunjun Yang
Journal:  Front Neurosci       Date:  2021-08-11       Impact factor: 4.677

5.  A preliminary investigation of radiomics differences between ruptured and unruptured intracranial aneurysms.

Authors:  Chubin Ou; Winston Chong; Chuan-Zhi Duan; Xin Zhang; Michael Morgan; Yi Qian
Journal:  Eur Radiol       Date:  2020-10-14       Impact factor: 5.315

6.  Identification of Small, Regularly Shaped Cerebral Aneurysms Prone to Rupture.

Authors:  S F Salimi Ashkezari; F Mut; M Slawski; C M Jimenez; A M Robertson; J R Cebral
Journal:  AJNR Am J Neuroradiol       Date:  2022-03-24       Impact factor: 3.825

Review 7.  Emerging Applications of Radiomics in Neurological Disorders: A Review.

Authors:  Houman Sotoudeh; Amir Hossein Sarrami; Glenn H Roberson; Omid Shafaat; Zahra Sadaatpour; Ali Rezaei; Gagandeep Choudhary; Aparna Singhal; Ehsan Sotoudeh; Manoj Tanwar
Journal:  Cureus       Date:  2021-12-01

8.  Development and validation of an institutional nomogram for aiding aneurysm rupture risk stratification.

Authors:  QingLin Liu; Peng Jiang; YuHua Jiang; HuiJian Ge; ShaoLin Li; HengWei Jin; Peng Liu; YouXiang Li
Journal:  Sci Rep       Date:  2021-07-05       Impact factor: 4.379

9.  Deep Shape Features for Predicting Future Intracranial Aneurysm Growth.

Authors:  Žiga Bizjak; Franjo Pernuš; Žiga Špiclin
Journal:  Front Physiol       Date:  2021-07-01       Impact factor: 4.566

10.  The Analysis of Morphoradiological Parameters in Predicting Risk of Basilar Artery Tip Aneurysm Rupture: A Retrospective Cohort Study.

Authors:  Abdulaziz Al-Sharydah; Abdulrahman Al-Abdulwahhab; Sari Al-Suhibani; Afnan Al-Muhanna; Abdullah Abohimed; Abdulmonem AlSharidah; Faisal Alabbas
Journal:  Int J Gen Med       Date:  2021-07-12
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