The nuclear protein Ki-67 and Tumor infiltrating lymphocytes (TILs) have been introduced as prognostic factors in predicting tumor progression and its treatment response. The value of the Ki-67 index and TILs in approach to heterogeneous tumors such as Breast cancer (BC), known as the most common cancer in women worldwide, has been highlighted in the literature. Due to the indeterminable and subjective nature of Ki-67 as well as TILs scoring, automated methods using machine learning, specifically approaches based on deep learning, have attracted attention. Yet, deep learning methods need considerable annotated data. In the absence of publicly available benchmarks for BC Ki-67 stained cell detection and further annotated classification of cells, we propose SHIDC-BC-Ki-67 as a dataset for the aforementioned purpose. We also introduce a novel pipeline and a backend, namely PathoNet for Ki-67 immunostained cell detection and classification and simultaneous determination of intratumoral TILs score. Further, we show that despite facing challenges, our proposed backend, PathoNet, outperforms the state of the art methods proposed to date in the harmonic mean measure.
翻译:由于Ki-67和TIL评分的不可确定性和主观性,使用机器学习的自动化方法,特别是基于深层学习的方法,引起了人们的注意。然而,深层学习方法需要大量附带说明的数据。由于缺乏关于BC-Ki-67染色细胞检测和进一步附加说明的细胞分类的公开基准,我们建议SHIDC-BC-Ki-67作为上述目的的数据集。我们还引入了一个新的管道和后端,即Ki-67免疫细胞检测和分类的路径网,以及同声确定表内TILs评分。此外,我们表明,尽管面临挑战,我们提议的后端、PathoNet(PathoNet)超越了目前建议的危害度度量度。