Prediction of Obliteration After the Gamma Knife Radiosurgery of Arteriovenous Malformations Using Hand-Crafted Radiomics and Deep-Learning Methods

被引:1
|
作者
Wu, David J. [1 ]
Kollitz, Megan [2 ]
Ward, Mitchell [3 ]
Dharnipragada, Rajiv S. [4 ]
Gupta, Ribhav
Sabal, Luke T. [3 ]
Singla, Ayush [5 ]
Tummala, Ramachandra [3 ]
Dusenbery, Kathryn [6 ]
Watanabe, Yoichi [6 ]
机构
[1] Univ Minnesota, Med, Sch Med, Minneapolis, MN USA
[2] Univ Minnesota, Sch Med, Radiol, Minneapolis, MN USA
[3] Univ Minnesota, Sch Med, Neurosurg, Minneapolis, MN USA
[4] Univ Minnesota, Sch Med, Neurol Surg, Minneapolis, MN USA
[5] Stanford Univ, Comp Sci, Stanford, CA USA
[6] Univ Minnesota, Radiat Oncol, Minneapolis, MN 55455 USA
关键词
predictive models; convolutional neural network; radiomics; avm; radiosurgery; gamma knife; STEREOTACTIC RADIOSURGERY; COMPLICATIONS;
D O I
10.7759/cureus.58835
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Introduction: Brain arteriovenous malformations (bAVMs) are vascular abnormalities that can be treated with embolization or radiotherapy to prevent the risk of future rupture. In this study, we use hand-crafted radiomics and deep learning techniques to predict favorable vs. unfavorable outcomes following Gamma Knife radiosurgery (GKRS) of bAVMs and compare their prediction performances. Methods: One hundred twenty-six patients seen at one academic medical center for GKRS obliteration of bAVMs over 15 years were retrospectively reviewed. Forty-two patients met the inclusion criteria. Favorable outcomes were defined as complete nidus obliteration demonstrated on cerebral angiogram and asymptomatic recovery. Unfavorable outcomes were defined as incomplete obliteration or complications relating to the AVM that developed after GKRS. Outcome predictions were made using a random forest model with hand-crafted radiomic features and a fine-tuned ResNet-34 convolutional neural network (CNN) model. The performance was evaluated by using a ten -fold cross -validation technique. Results: The average accuracy and area -under -curve (AUC) values of the Random Forest Classifier (RFC) with radiomics features were 68.5 +/- 9.80% and 0.705 +/- 0.086, whereas those of the ResNet-34 model were 60.0 +/- 11.9% and 0.694 +/- 0.124. Four radiomics features used with RFC discriminated unfavorable response cases from favorable response cases with statistical significance. When cropped images were used with ResNet-34, the accuracy and AUC decreased to 59.3 +/- 14.2% and 55.4 +/- 10.4%, respectively. Conclusions: A hand-crafted radiomics model and a pre -trained CNN model can be fine-tuned on pretreatment MRI scans to predict clinical outcomes of AVM patients undergoing GKRS with equivalent prediction performance. The outcome predictions are promising but require further external validation on more patients.
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页数:12
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