利用 SPECT 数据进行冠心病预后预测的机器学习:系统综述和荟萃分析。

IF 3.1 3区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING EJNMMI Research Pub Date : 2024-11-26 DOI:10.1186/s13550-024-01179-2
Vedat Cicek, Ezgi Hasret Kozan Cikirikci, Mert Babaoğlu, Almina Erdem, Yalcin Tur, Mohamed Iesar Mohamed, Tufan Cinar, Hatice Savas, Ulas Bagci
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引用次数: 0

摘要

背景:单光子发射计算机断层扫描(SPECT)分析依赖于定性视觉评估或半定量测量,如总灌注缺失,通过评估区域血流异常,在冠状动脉疾病的无创诊断中发挥着至关重要的作用。最近,基于机器学习(ML)的冠状动脉疾病诊断 SPECT 图像分析已显示出良好的前景,但其在预测患者长期预后(预后)方面的实用性仍是一个活跃的研究领域。在这篇综述中,我们全面考察了基于 ML 的 SPECT 成像分析的现状,重点是冠状动脉疾病的预后:我们通过系统检索获得了 12 项回顾性研究,这些研究调查了基于 SPECT 的 ML 模型对冠心病患者的预后预测,总样本量为 73023 人。其中几项研究表明,ML模型的预后能力优于传统的逻辑回归(LR)模型和总灌注缺失,尤其是在结合人口统计学数据和SPECT成像的情况下。对 6 项研究进行的元分析表明,所纳入的 ML 模型性能良好,对主要不良心血管事件和全因死亡率的敏感性和特异性均超过 65%。值得注意的是,将人口统计学信息与 SPECT 成像整合到 ML 框架中,可在统计学上显著改善预后效果:我们的综述表明,ML 模型无论是单独使用还是与人口统计学数据相结合,都能提高冠心病的预后预测能力。
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Machine learning for prognostic prediction in coronary artery disease with SPECT data: a systematic review and meta-analysis.

Background: Single-photon emission computed tomography (SPECT) analysis relies on qualitative visual assessment or semi-quantitative measures like total perfusion deficit that play a critical role in the non-invasive diagnosis of coronary artery disease by assessing regional blood flow abnormalities. Recently, machine learning (ML) -based analysis of SPECT images for coronary artery disease diagnosis has shown promise, with its utility in predicting long-term patient outcomes (prognosis) remaining an active area of investigation. In this review, we comprehensively examine the current landscape of ML-based analysis of SPECT imaging with an emphasis on prognostication of coronary artery disease.

Main body: Our systematic search yielded twelve retrospective studies, investigating SPECT-based ML models for prognostic prediction in coronary artery disease patients, with a total sample size of 73,023 individuals. Several of these studies demonstrate the superior prognostic capabilities of ML models over traditional logistic regression (LR) models and total perfusion deficit, especially when incorporating demographic data alongside SPECT imaging. Meta-analysis of 6 studies revealed promising performance of the included ML models, with sensitivity and specificity exceeding 65% for major adverse cardiovascular events and all-cause mortality. Notably, the integration of demographic information with SPECT imaging in ML frameworks shows statistically significant improvements in prognostic performance.

Conclusion: Our review suggests that ML models either independently or in combination with demographic data enhance prognostic prediction in coronary artery disease.

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来源期刊
EJNMMI Research
EJNMMI Research RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING&nb-
CiteScore
5.90
自引率
3.10%
发文量
72
审稿时长
13 weeks
期刊介绍: EJNMMI Research publishes new basic, translational and clinical research in the field of nuclear medicine and molecular imaging. Regular features include original research articles, rapid communication of preliminary data on innovative research, interesting case reports, editorials, and letters to the editor. Educational articles on basic sciences, fundamental aspects and controversy related to pre-clinical and clinical research or ethical aspects of research are also welcome. Timely reviews provide updates on current applications, issues in imaging research and translational aspects of nuclear medicine and molecular imaging technologies. The main emphasis is placed on the development of targeted imaging with radiopharmaceuticals within the broader context of molecular probes to enhance understanding and characterisation of the complex biological processes underlying disease and to develop, test and guide new treatment modalities, including radionuclide therapy.
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