Rai Taranpreet, Morisi Ambra, Bacci Barbara, Bacon Nicholas James, Dark Michael J, Aboellail Tawfik, Thomas Spencer A, La Ragione Roberto M, Wells Kevin
Centre for Vision, Speech and Signal Processing, University of Surrey, Guildford GU2 7XH, UK.
Surrey DataHub, University of Surrey, Guildford GU2 7AL, UK.
Cancers (Basel). 2024 Feb 2;16(3):644. doi: 10.3390/cancers16030644.
Performing a mitosis count (MC) is the diagnostic task of histologically grading canine Soft Tissue Sarcoma (cSTS). However, mitosis count is subject to inter- and intra-observer variability. Deep learning models can offer a standardisation in the process of MC used to histologically grade canine Soft Tissue Sarcomas. Subsequently, the focus of this study was mitosis detection in canine Perivascular Wall Tumours (cPWTs). Generating mitosis annotations is a long and arduous process open to inter-observer variability. Therefore, by keeping pathologists in the loop, a two-step annotation process was performed where a pre-trained Faster R-CNN model was trained on initial annotations provided by veterinary pathologists. The pathologists reviewed the output false positive mitosis candidates and determined whether these were overlooked candidates, thus updating the dataset. Faster R-CNN was then trained on this updated dataset. An optimal decision threshold was applied to maximise the F1-score predetermined using the validation set and produced our best F1-score of 0.75, which is competitive with the state of the art in the canine mitosis domain.
进行有丝分裂计数(MC)是对犬软组织肉瘤(cSTS)进行组织学分级的诊断任务。然而,有丝分裂计数存在观察者间和观察者内的变异性。深度学习模型可以在用于犬软组织肉瘤组织学分级的MC过程中提供标准化。随后,本研究的重点是犬血管周围壁肿瘤(cPWTs)中的有丝分裂检测。生成有丝分裂注释是一个漫长而艰巨的过程,容易受到观察者间变异性的影响。因此,在病理学家的参与下,进行了两步注释过程,其中一个预训练的Faster R-CNN模型在兽医病理学家提供的初始注释上进行训练。病理学家审查输出的假阳性有丝分裂候选物,并确定这些是否是被遗漏的候选物,从而更新数据集。然后在这个更新后的数据集上训练Faster R-CNN。应用一个最佳决策阈值来最大化使用验证集预先确定的F1分数,并产生了我们最好的F1分数0.75,这与犬有丝分裂领域的现有技术水平具有竞争力。