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Deep learning analysis of left ventricular myocardium in CT angiographic intermediate-degree coronary stenosis improves the diagnostic accuracy for identification of functionally significant stenosis

机译:CT血管造影中间度冠状动脉狭窄中左心室心肌的深度学习分析提高了鉴定功能显着狭窄的诊断准确性

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ObjectivesTo evaluate the added value of deep learning (DL) analysis of the left ventricular myocardium (LVM) in resting coronary CT angiography (CCTA) over determination of coronary degree of stenosis (DS), for identification of patients with functionally significant coronary artery stenosis.MethodsPatients who underwent CCTA prior to an invasive fractional flow reserve (FFR) measurement were retrospectively selected. Highest DS from CCTA was used to classify patients as having non-significant (24% DS), intermediate (25-69% DS), or significant stenosis (70% DS). Patients with intermediate stenosis were referred for fully automatic DL analysis of the LVM. The DL algorithm characterized the LVM, and likely encoded information regarding shape, texture, contrast enhancement, and more. Based on these encodings, features were extracted and patients classified as having a non-significant or significant stenosis. Diagnostic performance of the combined method was evaluated and compared to DS evaluation only. Functionally significant stenosis was defined as FFR0.8 or presence of angiographic high-grade stenosis (90% DS).ResultsThe final study population consisted of 126 patients (77% male, 599years). Eighty-one patients (64%) had a functionally significant stenosis. The proposed method resulted in improved discrimination (AUC=0.76) compared to classification based on DS only (AUC=0.68). Sensitivity and specificity were 92.6% and 31.1% for DS only (50% indicating functionally significant stenosis), and 84.6% and 48.4% for the proposed method.ConclusionThe combination of DS with DL analysis of the LVM in intermediate-degree coronary stenosis may result in improved diagnostic performance for identification of patients with functionally significant coronary artery stenosis.Key Points center dot Assessment of degree of coronary stenosis on CCTA has consistently high sensitivity and negative predictive value, but has limited specificity for identifying the functional significance of a stenosis.center dot Deep learning algorithms are able to learn complex patterns and relationships directly from the images without prior specification of which image features represent presence of disease, and thereby may be more sensitive to subtle changes in the LVM caused by functionally significant stenosis.p id=Par7 center dot Addition of deep learning analysis of the left ventricular myocardium to the evaluation of degree of coronary artery stenosis improves diagnostic performance and increases specificity of resting CCTA. This could potentially decrease the number of patients undergoing invasive coronary angiography.
机译:Objectivesto评估左心室心肌(LVM)的深度学习(DL)分析的附加值在休息冠状动脉血管造影(CCTA)上测定狭窄(DS)的冠状动脉程度,用于鉴定功能性显着的冠状动脉狭窄患者。回顾性地选择在侵入性分数流量储备(FFR)测量之前接受CCTA的方法分类剂。来自CCTA的最高DS用于将患者分类为具有非显着(24%DS),中间体(25-69%DS)或显着的狭窄(70%DS)。中间狭窄的患者被提及全自动自动化LVM分析。 DL算法表征了LVM,并且有可能编码关于形状,纹理,对比度增强等的信息。基于这些编码,提取特征,患者被归类为具有非显着或显着的狭窄。评估组合方法的诊断性能并仅与DS评估进行比较。功能性显着的狭窄被定义为FFR0.8或存在血管造影高级狭窄(90%DS).Resultthe最终的学习人群由126名患者(77%的男性,599年)组成。八十一名患者(64%)具有功能性显着的狭窄。与仅基于DS的分类(AUC = 0.68)相比,所提出的方法导致鉴别(AUC = 0.76)。敏感性和特异性仅为DS的92.6%和31.1%(50%表明功能性显着的狭窄),所提出的方法的84.6%和48.4%。结论DS对中间度冠状动脉狭窄中LVM的DL分析的组合可能会产生在改进鉴定功能性显着的冠状动脉狭窄患者的诊断性能方面。CCTA对冠状动脉狭窄程度的点心点评估具有始终如一的敏感性和负面预测值,但对狭窄的功能意义具有有限的特异性。 DOT深度学习算法能够直接从图像直接从图像中学习复杂的模式和关系,而没有先前的图像特征代表疾病的存在,从而可能对由功能显着的狭窄引起的LVM的微妙变化更敏感.p id = par7中心点添加左心室肌肉的深度学习分析Cardium对冠状动脉狭窄程度的评估提高了诊断性能并提高了休息CCTA的特异性。这可能会降低接受侵入性冠状动脉造影的患者的数量。

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