scholarly journals Identification of prognostic spatial organization features in colorectal cancer microenvironment using deep learning on histopathology images

2021 ◽  
pp. 100008
Author(s):  
Lin Qi ◽  
Jia Ke ◽  
Zhaoliang Yu ◽  
Yi Cao ◽  
Yuni Lai ◽  
...  
2020 ◽  
Author(s):  
Yeongwon Kim ◽  
Kyungdoc Kim ◽  
Jeonghyuk Park ◽  
Hyunho Park ◽  
Kyu-Hwan Jung ◽  
...  

2020 ◽  
Vol 26 (40) ◽  
pp. 6207-6223
Author(s):  
Hyun-Jong Jang ◽  
Ahwon Lee ◽  
J Kang ◽  
In Hye Song ◽  
Sung Hak Lee

2021 ◽  
Vol 4 ◽  
Author(s):  
Kyubum Lee ◽  
John H. Lockhart ◽  
Mengyu Xie ◽  
Ritu Chaudhary ◽  
Robbert J. C. Slebos ◽  
...  

The tumor immune microenvironment (TIME) encompasses many heterogeneous cell types that engage in extensive crosstalk among the cancer, immune, and stromal components. The spatial organization of these different cell types in TIME could be used as biomarkers for predicting drug responses, prognosis and metastasis. Recently, deep learning approaches have been widely used for digital histopathology images for cancer diagnoses and prognoses. Furthermore, some recent approaches have attempted to integrate spatial and molecular omics data to better characterize the TIME. In this review we focus on machine learning-based digital histopathology image analysis methods for characterizing tumor ecosystem. In this review, we will consider three different scales of histopathological analyses that machine learning can operate within: whole slide image (WSI)-level, region of interest (ROI)-level, and cell-level. We will systematically review the various machine learning methods in these three scales with a focus on cell-level analysis. We will provide a perspective of workflow on generating cell-level training data sets using immunohistochemistry markers to “weakly-label” the cell types. We will describe some common steps in the workflow of preparing the data, as well as some limitations of this approach. Finally, we will discuss future opportunities of integrating molecular omics data with digital histopathology images for characterizing tumor ecosystem.


2021 ◽  
pp. canimm.0772.2021
Author(s):  
Juha P. Väyrynen ◽  
Koichiro Haruki ◽  
Mai Chan Lau ◽  
Sara A. Väyrynen ◽  
Tomotaka Ugai ◽  
...  

2021 ◽  
Vol 179 ◽  
pp. 632-639
Author(s):  
Steven Amadeus ◽  
Tjeng Wawan Cenggoro ◽  
Arif Budiarto ◽  
Bens Pardamean

2021 ◽  
Vol 7 (3) ◽  
pp. 51
Author(s):  
Emanuela Paladini ◽  
Edoardo Vantaggiato ◽  
Fares Bougourzi ◽  
Cosimo Distante ◽  
Abdenour Hadid ◽  
...  

In recent years, automatic tissue phenotyping has attracted increasing interest in the Digital Pathology (DP) field. For Colorectal Cancer (CRC), tissue phenotyping can diagnose the cancer and differentiate between different cancer grades. The development of Whole Slide Images (WSIs) has provided the required data for creating automatic tissue phenotyping systems. In this paper, we study different hand-crafted feature-based and deep learning methods using two popular multi-classes CRC-tissue-type databases: Kather-CRC-2016 and CRC-TP. For the hand-crafted features, we use two texture descriptors (LPQ and BSIF) and their combination. In addition, two classifiers are used (SVM and NN) to classify the texture features into distinct CRC tissue types. For the deep learning methods, we evaluate four Convolutional Neural Network (CNN) architectures (ResNet-101, ResNeXt-50, Inception-v3, and DenseNet-161). Moreover, we propose two Ensemble CNN approaches: Mean-Ensemble-CNN and NN-Ensemble-CNN. The experimental results show that the proposed approaches outperformed the hand-crafted feature-based methods, CNN architectures and the state-of-the-art methods in both databases.


Sign in / Sign up

Export Citation Format

Share Document