Cervical cancer is a malignant tumor that seriously threatens women's health, and is one of the most common that affects women worldwide. For its early detection, colposcopic images of the cervix are used for searching for possible injuries or abnormalities. An inherent characteristic of these images is the presence of specular reflections (brightness) that make it difficult to observe some regions, which might imply misdiagnosis. In this paper, a new strategy based on neural networks is introduced for eliminating specular reflections and estimating the unobserved anatomical cervix portion under the bright zones. For overcoming the fact that the ground truth corresponding to the specular reflection regions is always unknown, the new strategy proposes the supervised training of a neural network to learn how to restore any hidden regions of colposcopic images. Once the specular reflections are identified, they are removed from the image, and the previously trained network is used to fulfill these deleted areas. The quality of the processed images was evaluated quantitatively and qualitatively. In 21 of the 22 evaluated images, the detected specular reflections were eliminated, whereas, in the remaining one, these reflections were almost completely eliminated. The distribution of the colors and the content of the restored images are similar to those of the originals. The evaluation carried out by a specialist in Cervix Pathology concluded that, after eliminating the specular reflections, the anatomical and physiological elements of the cervix are observable in the restored images, which facilitates the medical diagnosis of cervical pathologies. Our method has the potential to improve the early detection of cervical cancer.
翻译:宫颈癌是一种严重危害妇女健康的恶性肿瘤,是影响全世界妇女的最常见肿瘤之一。为了进行早期检测,使用宫颈癌的阴部图象来寻找可能的伤害或异常。这些图象的一个固有特征是存在视觉反射(直视),使得难以观察某些区域,这可能意味着诊断错误。在本文中,引入了以神经网络为基础的新战略,以消除镜像反射和估计光带下未观察到的解剖产子部分。为了克服与镜形反射区相对应的地面真实性总是未知的事实,新战略建议对神经网络进行监管培训,以学习如何恢复任何隐藏的科形图像区域。一旦发现镜像反射,它们就会被从图像中移除,而以前训练过的网络被用来完成这些删除的区域。对加工图像的质量进行了定量和定性评估。在22个被评估的图像中,检测到的与镜形反射区对应的地面图像总是未知的这一事实,新的战略提议对神经网络进行监督培训,以学习如何恢复任何隐蔽的镜像区域,一旦发现,这些镜形反射过程就会被消除,而其原始的镜像的原影体反射则被消除了。在直径中,这些直径反射结果中,这些结果中,这些结果被消除了。在直径反射过程中,这些结果的原影的原影的原的原影体反射结果被消除了。在一种方法被消除了。