Abstract

Background: The prediction of aneurysm treatment outcomes can help to optimize the treatment strategies. Machine learning (ML) has shown positive results in many clinical areas. However, the development of such models requires expertise in ML, which is not an easy task for surgeons.Objectives: The recently emerged automated machine learning (AutoML) has shown promise in making ML more accessible to non-computer experts. We aimed to evaluate the feasibility of applying AutoML to develop the ML models for treatment outcome prediction.Methods: The patients with aneurysms treated by endovascular treatment were prospectively recruited from 2016 to 2020. Treatment was considered successful if angiographic complete occlusion was achieved at follow-up. A statistical prediction model was developed using multivariate logistic regression. In addition, two ML models were developed. One was developed manually and the other was developed by AutoML. Three models were compared based on their area under the precision-recall curve (AUPRC) and area under the receiver operating characteristic curve (AUROC).Results: The aneurysm size, stent-assisted coiling (SAC), and posterior circulation were the three significant and independent variables associated with treatment outcome. The statistical model showed an AUPRC of 0.432 and AUROC of 0.745. The conventional manually trained ML model showed an improved AUPRC of 0.545 and AUROC of 0.781. The AutoML derived ML model showed the best performance with AUPRC of 0.632 and AUROC of 0.832, significantly better than the other two models.Conclusions: This study demonstrated the feasibility of using AutoML to develop a high-quality ML model, which may outperform the statistical model and manually derived ML models. AutoML could be a useful tool that makes ML more accessible to the clinical researchers.

Highlights

  • Endovascular therapy is widely used in the treatment of intracranial aneurysms [1]

  • In this study, we aimed to evaluate the feasibility of using automated machine learning (AutoML) to develop the Machine learning (ML) models for aneurysm treatment outcome prediction

  • The majority of them were located on the internal carotid artery (ICA), followed by the middle cerebral artery (MCA) and anterior communicating artery (AComA)

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Summary

Introduction

Endovascular therapy is widely used in the treatment of intracranial aneurysms [1]. Despite a remarkable advancement of the endovascular coiling for intracranial aneurysms, there still exists a high rate of recurrence and recanalization. Many studies have tried to study the risk factors for recanalization. The aneurysm size, morphologies, treatment strategies, and hemodynamics have been found to be associated recanalization [4,5,6,7,8,9]. Some studies have tried to develop the models or grading scales to predict treatment outcome [4, 10,11,12]. The prediction of aneurysm treatment outcomes can help to optimize the treatment strategies. The development of such models requires expertise in ML, which is not an easy task for surgeons

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