Cervical cancer is a very common and fatal type of cancer in women. Cytopathology images are often used to screen for this cancer. Given that there is a possibility that many errors can occur during manual screening, a computer-aided diagnosis system based on deep learning has been developed. Deep learning methods require a fixed dimension of input images, but the dimensions of clinical medical images are inconsistent. The aspect ratios of the images suffer while resizing them directly. Clinically, the aspect ratios of cells inside cytopathological images provide important information for doctors to diagnose cancer. Therefore, it is difficult to resize directly. However, many existing studies have resized the images directly and have obtained highly robust classification results. To determine a reasonable interpretation, we have conducted a series of comparative experiments. First, the raw data of the SIPaKMeD dataset are pre-processed to obtain standard and scaled datasets. Then, the datasets are resized to 224 x 224 pixels. Finally, 22 deep learning models are used to classify the standard and scaled datasets. The results of the study indicate that deep learning models are robust to changes in the aspect ratio of cells in cervical cytopathological images. This conclusion is also validated via the Herlev dataset.
翻译:宫颈癌是女性中一种非常常见和致命的癌症。 细胞病理学图像经常被用来筛查癌症。 鉴于在人工筛查期间可能会发生许多错误,已经开发了基于深层学习的计算机辅助诊断系统。 深层次的学习方法需要输入图像的固定层面, 但临床医学图像的维度是不一致的。 图像的方位比例在直接调整时会受到影响。 临床上,细胞病理学图像内的细胞的方位比例为医生诊断癌症提供了重要信息。 因此, 很难直接调整比例。 但是, 许多现有研究直接调整了图像的大小, 并取得了高度可靠的分类结果。 为了确定合理的解释, 我们进行了一系列比较实验。 首先, SIPAKMeD数据集的原始数据是预先处理的, 以获得标准和缩放的数据集。 然后, 数据集被重新缩放到224 x 224 像素。 最后, 22个深学习模型被用于对标准进行分类和缩放数据集。 研究结果表明, 深层学习模型对于通过宫颈部细胞图象的侧位进行校验。