Prediction of endovascular leaks after thoracic endovascular aneurysm repair though machine learning applied to pre-procedural computed tomography angiographs.

IF 2.4 4区 医学 Q3 ENGINEERING, BIOMEDICAL Physical and Engineering Sciences in Medicine Pub Date : 2024-09-01 Epub Date: 2024-05-02 DOI:10.1007/s13246-024-01429-6
Takanori Masuda, Yasutaka Baba, Takeshi Nakaura, Yoshinori Funama, Tomoyasu Sato, Shouko Masuda, Rumi Gotanda, Keiko Arao, Hiromasa Imaizumi, Shinichi Arao, Atsushi Ono, Junichi Hiratsuka, Kazuo Awai
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Abstract

To predict endoleaks after thoracic endovascular aneurysm repair (TEVAR) we submitted patient characteristics and vessel features observed on pre- operative computed tomography angiography (CTA) to machine-learning. We evaluated 1-year follow-up CT scans (arterial and delayed phases) in patients who underwent TEVAR for the presence or absence of an endoleak. We evaluated the effect of machine learning of the patient age, sex, weight, and height, plus 22 vascular features on the ability to predict post-TEVAR endoleaks. The extreme Gradient Boosting (XGBoost) for ML system was trained on 14 patients with- and 131 without endoleaks. We calculated their importance by applying XGBoost to machine learning and compared our findings between with those of conventional vessel measurement-based methods such as the 22 vascular features by using the Pearson correlation coefficients. Pearson correlation coefficient and 95% confidence interval (CI) were r = 0.86 and 0.75 to 0.92 for the machine learning, r = - 0.44 and - 0.56 to - 0.29 for the vascular angle, and r = - 0.19 and - 0.34 to - 0.02 for the diameter between the subclavian artery and the aneurysm (Fig. 3a-c, all: p < 0.05). With machine-learning, the univariate analysis was significant higher compared with the vascular angle and in the diameter between the subclavian artery and the aneurysm such as the conventional methods (p < 0.05). To predict the risk for post-TEVAR endoleaks, machine learning was superior to the conventional vessel measurement method when factors such as patient characteristics, and vascular features (vessel length, diameter, and angle) were evaluated on pre-TEVAR thoracic CTA images.

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通过将机器学习应用于术前计算机断层扫描血管造影,预测胸腔内血管瘤修补术后的血管内渗漏。
为了预测胸腔内血管瘤修补术(TEVAR)后的内漏,我们将患者特征和术前计算机断层扫描血管造影(CTA)观察到的血管特征提交给机器学习。我们对接受 TEVAR 的患者进行了 1 年的随访 CT 扫描(动脉期和延迟期),以评估是否存在内漏。我们评估了对患者年龄、性别、体重和身高以及 22 个血管特征进行机器学习对预测 TEVAR 术后内漏能力的影响。我们在 14 名有内漏和 131 名无内漏的患者身上训练了用于 ML 系统的极端梯度提升(XGBoost)。通过将 XGBoost 应用于机器学习,我们计算出了它们的重要性,并使用皮尔逊相关系数将我们的发现与传统的基于血管测量的方法(如 22 种血管特征)进行了比较。机器学习的皮尔逊相关系数和 95% 置信区间 (CI) 分别为 r = 0.86 和 0.75 至 0.92,血管角度的皮尔逊相关系数和 95% 置信区间 (CI) 分别为 r = - 0.44 和 - 0.56 至 - 0.29,锁骨下动脉与动脉瘤之间直径的皮尔逊相关系数和 95% 置信区间 (CI) 分别为 r = - 0.19 和 - 0.34 至 - 0.02(图 3a-c,所有数据:P<0.05)。
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CiteScore
8.40
自引率
4.50%
发文量
110
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