Li Shuying, Zhang Menghao, Zhu Quing
Department of Biomedical Engineering, Washington University in St. Louis, 1 Brookings Dr, St. Louis 63130, USA.
Department of Electrical & Systems Engineering, Washington University in St. Louis, 1 Brookings Dr, St. Louis 63130, USA.
Biomed Opt Express. 2021 Jul 30;12(8):5320-5336. doi: 10.1364/BOE.428107. eCollection 2021 Aug 1.
Ultrasound (US)-guided diffuse optical tomography (DOT) has demonstrated potential value for breast cancer diagnosis and treatment response assessment. However, in clinical use, the chest wall, poor probe-tissue contact, and tissue heterogeneity can all cause image artifacts. These image artifacts, appearing commonly as hot spots in the non-lesion regions (edge artifacts), can decrease the reconstruction accuracy and cause misinterpretation of lesion images. Here we introduce an iterative, connected component analysis-based image artifact reduction algorithm. A convolutional neural network (CNN) is used to segment co-registered US images to extract the lesion location and size to guide the artifact reduction. We demonstrate its performance using Monte Carlo simulations on VICTRE digital breast phantoms and breast patient images. In simulated tissue mismatch models, this algorithm successfully reduces edge artifacts without significantly changing the reconstructed target absorption coefficients. With clinical data it improves the optical contrast between malignant and benign groups, from 1.55 without artifact reduction to 1.91 with artifact reduction. The proposed algorithm has a broad range of applications in other modality-guided DOT imaging.
超声(US)引导的漫射光学层析成像(DOT)已在乳腺癌诊断和治疗反应评估中显示出潜在价值。然而,在临床应用中,胸壁、探头与组织接触不良以及组织异质性都会导致图像伪影。这些图像伪影通常表现为非病变区域的热点(边缘伪影),会降低重建精度并导致对病变图像的误判。在此,我们介绍一种基于迭代连通分量分析的图像伪影减少算法。使用卷积神经网络(CNN)对配准后的超声图像进行分割,以提取病变位置和大小,从而指导伪影减少。我们在VICTRE数字乳腺模型和乳腺患者图像上使用蒙特卡洛模拟展示了其性能。在模拟组织失配模型中,该算法成功减少了边缘伪影,且未显著改变重建的目标吸收系数。对于临床数据,它提高了恶性和良性组之间的光学对比度,从未减少伪影时的1.55提高到减少伪影后的1.91。所提出的算法在其他模态引导的DOT成像中具有广泛的应用。