Ovarian cancer is the most lethal gynaecological malignancy. The disease is most commonly asymptomatic at its early stages and its diagnosis relies on expert evaluation of transvaginal ultrasound images. Ultrasound is the first-line imaging modality for characterising adnexal masses, it requires significant expertise and its analysis is subjective and labour-intensive, therefore open to error. Hence, automating processes to facilitate and standardise the evaluation of scans is desired in clinical practice. Using supervised learning, we have demonstrated that segmentation of adnexal masses is possible, however, prevalence and label imbalance restricts the performance on under-represented classes. To mitigate this we apply a novel pathology-specific data synthesiser. We create synthetic medical images with their corresponding ground truth segmentations by using Poisson image editing to integrate less common masses into other samples. Our approach achieves the best performance across all classes, including an improvement of up to 8% when compared with nnU-Net baseline approaches.
翻译:子宫颈癌是最致命的妇科恶性肿瘤。该疾病在早期阶段最常见的症状是无症状,其诊断依赖对跨阴道超声波图像的专家评估。超声波是用于定性成份的一线成像模式,它需要大量的专门知识,其分析是主观的和劳动密集型的,因此容易出错。因此,临床实践需要自动化程序,以便利和标准化扫描评价。但是,我们通过监督学习,已经证明对上层人群进行分解是可能的,但流行性和标签不平衡限制了代表性不足的阶层的性能。为了减轻这一影响,我们应用了一个新的病理学特定数据合成器。我们通过使用波瓦森图像编辑将较不常见的成份纳入其他样本,来创建合成医学图像及其相应的地面真象分块。我们的方法是在所有阶层取得最佳的性能,包括与NNU-Net基线方法相比,改进到8%。