Classification of anatomic patterns of peripheral artery disease with automated machine learning (AutoML).

IF 1 4区 医学 Q4 PERIPHERAL VASCULAR DISEASE Vascular Pub Date : 2025-02-01 Epub Date: 2024-02-25 DOI:10.1177/17085381241236571
Yury Rusinovich, Volha Rusinovich, Aliaksei Buhayenka, Vitalii Liashko, Arsen Sabanov, David J F Holstein, Samer Aldmour, Markus Doss, Daniela Branzan
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Abstract

Aim: The aim of this study was to investigate the potential of novel automated machine learning (AutoML) in vascular medicine by developing a discriminative artificial intelligence (AI) model for the classification of anatomical patterns of peripheral artery disease (PAD).

Material and methods: Random open-source angiograms of lower limbs were collected using a web-indexed search. An experienced researcher in vascular medicine labelled the angiograms according to the most applicable grade of femoropopliteal disease in the Global Limb Anatomic Staging System (GLASS). An AutoML model was trained using the Vertex AI (Google Cloud) platform to classify the angiograms according to the GLASS grade with a multi-label algorithm. Following deployment, we conducted a test using 25 random angiograms (five from each GLASS grade). Model tuning through incremental training by introducing new angiograms was executed to the limit of the allocated quota following the initial evaluation to determine its effect on the software's performance.

Results: We collected 323 angiograms to create the AutoML model. Among these, 80 angiograms were labelled as grade 0 of femoropopliteal disease in GLASS, 114 as grade 1, 34 as grade 2, 25 as grade 3 and 70 as grade 4. After 4.5 h of training, the AI model was deployed. The AI self-assessed average precision was 0.77 (0 is minimal and 1 is maximal). During the testing phase, the AI model successfully determined the GLASS grade in 100% of the cases. The agreement with the researcher was almost perfect with the number of observed agreements being 22 (88%), Kappa = 0.85 (95% CI 0.69-1.0). The best results were achieved in predicting GLASS grade 0 and grade 4 (initial precision: 0.76 and 0.84). However, the AI model exhibited poorer results in classifying GLASS grade 3 (initial precision: 0.2) compared to other grades. Disagreements between the AI and the researcher were associated with the low resolution of the test images. Incremental training expanded the initial dataset by 23% to a total of 417 images, which improved the model's average precision by 11% to 0.86.

Conclusion: After a brief training period with a limited dataset, AutoML has demonstrated its potential in identifying and classifying the anatomical patterns of PAD, operating unhindered by the factors that can affect human analysts, such as fatigue or lack of experience. This technology bears the potential to revolutionize outcome prediction and standardize evidence-based revascularization strategies for patients with PAD, leveraging its adaptability and ability to continuously improve with additional data. The pursuit of further research in AutoML within the field of vascular medicine is both promising and warranted. However, it necessitates additional financial support to realize its full potential.

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利用自动机器学习(AutoML)对外周动脉疾病的解剖模式进行分类。
目的:本研究旨在通过开发一种用于外周动脉疾病(PAD)解剖模式分类的辨别性人工智能(AI)模型,研究新型自动机器学习(AutoML)在血管医学中的应用潜力:材料: 通过网络索引搜索,随机收集了下肢的开放源血管造影。一位经验丰富的血管医学研究人员根据全球肢体解剖分期系统(GLASS)中最适用的股骨腘动脉疾病分级对血管造影进行了标注。我们使用 Vertex AI(谷歌云)平台训练了一个 AutoML 模型,根据 GLASS 分级采用多标签算法对血管造影进行分类。部署完成后,我们使用 25 张随机血管造影(每个 GLASS 等级 5 张)进行了测试。在初步评估后,我们通过引入新血管造影进行增量训练,对模型进行了调整,以确定其对软件性能的影响:我们收集了 323 张血管造影来创建 AutoML 模型。结果:我们收集了 323 张血管造影来创建 AutoML 模型,其中 80 张血管造影在 GLASS 中被标记为股骨头疾病 0 级,114 张为 1 级,34 张为 2 级,25 张为 3 级,70 张为 4 级。经过 4.5 小时的训练后,人工智能模型开始部署。人工智能自我评估的平均精确度为 0.77(0 为最低,1 为最高)。在测试阶段,人工智能模型成功确定了 100%的 GLASS 等级。与研究人员的吻合度几乎完美,观察到的吻合次数为 22 次(88%),Kappa = 0.85 (95% CI 0.69-1.0)。预测 GLASS 0 级和 4 级的结果最好(初始精度:0.76 和 0.84)。然而,与其他等级相比,人工智能模型在对 GLASS 3 级进行分类时的结果较差(初始精确度:0.2)。人工智能与研究人员之间的分歧与测试图像的低分辨率有关。增量训练将初始数据集扩大了 23%,共增加了 417 幅图像,从而将模型的平均精确度提高了 11%,达到 0.86:在对有限的数据集进行了短暂的训练后,AutoML 已经证明了其在识别和分类 PAD 解剖模式方面的潜力,其运行不受影响人类分析师的因素(如疲劳或缺乏经验)的影响。这项技术具有革命性的潜力,可以利用其适应性和随着数据的增加而不断改进的能力,为 PAD 患者的预后预测和循证血管再通策略实现标准化。在血管医学领域进一步开展 AutoML 研究是大有可为的。然而,要充分发挥其潜力,还需要更多的资金支持。
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来源期刊
Vascular
Vascular 医学-外周血管病
CiteScore
2.30
自引率
9.10%
发文量
196
审稿时长
6-12 weeks
期刊介绍: Vascular provides readers with new and unusual up-to-date articles and case reports focusing on vascular and endovascular topics. It is a highly international forum for the discussion and debate of all aspects of this distinct surgical specialty. It also features opinion pieces, literature reviews and controversial issues presented from various points of view.
期刊最新文献
A retrospective assessment of venous recanalization outcomes for oral anticoagulant treatment in deep vein thrombosis. Classification of anatomic patterns of peripheral artery disease with automated machine learning (AutoML). Endovascular treatment with interwoven nitinol stent for common femoral artery lesions: 2-year outcomes of a single center experience. Extra-anatomic bypass procedures for severe aortoiliac occlusive disease-A cohort study. Physician-modified inner-branched endovascular repair with re-intervention.
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