Sawyer Travis W, Rice Photini F S, Sawyer David M, Koevary Jennifer W, Barton Jennifer K
University of Arizona, College of Optical Sciences, Tucson, Arizona, United States.
University of Arizona, Department of Biomedical Engineering, Tucson, Arizona, United States.
J Med Imaging (Bellingham). 2019 Jan;6(1):014002. doi: 10.1117/1.JMI.6.1.014002. Epub 2019 Jan 29.
Ovarian cancer has the lowest survival rate among all gynecologic cancers predominantly due to late diagnosis. Early detection of ovarian cancer can increase 5-year survival rates from 40% up to 92%, yet no reliable early detection techniques exist. Optical coherence tomography (OCT) is an emerging technique that provides depth-resolved, high-resolution images of biological tissue in real-time and demonstrates great potential for imaging of ovarian tissue. Mouse models are crucial to quantitatively assess the diagnostic potential of OCT for ovarian cancer imaging; however, due to small organ size, the ovaries must first be separated from the image background using the process of segmentation. Manual segmentation is time-intensive, as OCT yields three-dimensional data. Furthermore, speckle noise complicates OCT images, frustrating many processing techniques. While much work has investigated noise-reduction and automated segmentation for retinal OCT imaging, little has considered the application to the ovaries, which exhibit higher variance and inhomogeneity than the retina. To address these challenges, we evaluate a set of algorithms to segment OCT images of mouse ovaries. We examine five preprocessing techniques and seven segmentation algorithms. While all preprocessing methods improve segmentation, Gaussian filtering is most effective, showing an improvement of . Of the segmentation algorithms, active contours performs best, segmenting with an accuracy of compared with manual segmentation. Even so, further optimization could lead to maximizing the performance for segmenting OCT images of the ovaries.
在所有妇科癌症中,卵巢癌的生存率最低,主要原因是诊断较晚。早期发现卵巢癌可使5年生存率从40%提高到92%,然而目前尚无可靠的早期检测技术。光学相干断层扫描(OCT)是一种新兴技术,可实时提供生物组织的深度分辨高分辨率图像,并在卵巢组织成像方面显示出巨大潜力。小鼠模型对于定量评估OCT在卵巢癌成像中的诊断潜力至关重要;然而,由于器官尺寸小,必须首先使用分割过程将卵巢与图像背景分离。手动分割耗时,因为OCT产生三维数据。此外,散斑噪声使OCT图像复杂化,困扰了许多处理技术。虽然已有很多工作研究了视网膜OCT成像的降噪和自动分割,但很少有人考虑将其应用于卵巢,卵巢比视网膜表现出更高的变异性和不均匀性。为应对这些挑战,我们评估了一组用于分割小鼠卵巢OCT图像的算法。我们研究了五种预处理技术和七种分割算法。虽然所有预处理方法都改善了分割效果,但高斯滤波最为有效,显示出 的改善。在分割算法中,主动轮廓表现最佳,与手动分割相比,分割准确率为 。即便如此,进一步优化可能会使卵巢OCT图像分割性能最大化。