ISSN 1004-4140
    CN 11-3017/P

    基于双能CT的人工智能ASPECTS评分在急性缺血性脑卒中评估中的应用研究

    Performance and Optimization of Reconstruction Parameters for Dual-Energy CT-Based Artificial Intelligence ASPECTS Scoring in Acute Ischemic Stroke Assessment

    • 摘要:
      目的 探讨基于双能CT(DECT)的人工智能(AI)Alberta卒中早期CT评分(ASPECTS)在急性缺血性脑卒中(AIS)评估中的诊断效能,并优化重建参数。
      方法 前瞻性收集疑似急性缺血性脑卒中(发病时间≤12 h)且DWI检查阳性的患者51例,使用80/Sn150 kVp双能扫描模式,用Mono+技术重建出Qr 70 keV、Qr 75 keV两组单能图像,将双能扫描生成的常规线性融合图像定义为NCCT,再用Qr和Hr两种卷积核分别重建出Qr NCCT、Hr NCCT两组图像。应用两种AI模型(AI模型1、AI模型2)对Qr 70 keV、Qr 75 keV、Qr NCCT、Hr NCCT四组图像进行ASPECTS评分,以DWI-ASPECTS为金标准,分析不同重建方法与AI模型的诊断效能及一致性。
      结果 模型对比显示,模型1的准确性在所有重建方法和病变位置中均高于模型 2,其中模型1 Qr 70 keV组在整体病变中其准确性(81.2% vs. 77.5%)、敏感性(72.3% vs. 58.6%)及与金标准的 Kappa一致性均更高(均P < 0.05);模型2的特异性、阳性预测值(PPV)优于模型1(P < 0.05)。重建方法中,Qr 70 keV与Hr NCCT诊断效能最优,Hr NCCT较Qr NCCT可提升模型敏感性,Qr 70 keV对微小缺血灶识别更敏感。
      结论 基于双能CT的人工智能ASPECTS评分在急性缺血性脑卒中评估时,推荐采用Qr 70 keV或Hr NCCT重建图像,并搭配模型1使用。

       

      Abstract: Objective: To explore the diagnostic efficacy of artificial intelligence (AI)-assisted Alberta Stroke Program Early CT Score (ASPECTS) based on dual-energy CT (DECT) in the evaluation of acute ischemic stroke (AIS) and to optimize reconstruction parameters. Methods: Fifty-one patients with suspected AIS (onset time ≤12 h) and positive diffusion-weighted imaging (DWI) findings were prospectively enrolled. A dual-energy scanning mode of 80/Sn150 kVp was used, and two sets of monoenergetic images (Qr 70 keV and Qr 75 keV) were reconstructed using Mono+ technology. The conventional linear fusion image generated by dual-energy scanning was defined as a non-contrast CT (NCCT), and two additional sets of images (Qr NCCT and Hr NCCT) were reconstructed using the Qr and Hr convolution kernels. Two AI models (Models 1 and 2) were applied to evaluate the four image sets (Qr 70 keV, Qr 75 keV, Qr NCCT, and Hr NCCT) using ASPECTS. Using DWI-ASPECTS as the gold standard, the diagnostic efficacy and consistency of different reconstruction methods and AI models were analyzed. Results: Model comparison showed that the accuracy of Model 1 was higher than that of Model 2 for all reconstruction methods and lesion locations. Specifically, the Model 1 + Qr 70 keV group achieved a higher overall accuracy (81.2% vs. 77.5%), sensitivity (72.3% vs. 58.6%), and kappa consistency with the gold standard (all P < 0.05). Model 2 outperformed Model 1 in terms of specificity and positive predictive value (PPV) (P < 0.05). Among the reconstruction methods, Qr 70 keV and Hr NCCT exhibited optimal diagnostic efficacy. Hr NCCT improved the model sensitivity compared to Qr NCCT, while Qr 70 keV was more sensitive for identifying small ischemic lesions. Conclusion: For AI-assisted ASPECTS scoring based on DECT in AIS evaluation, the use of images reconstructed using Qr 70 keV or Hr NCCT combined with AI Model 1 is recommended.

       

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