Identifying primary tumor site of origin for liver metastases via a combination of handcrafted and deep learning features

Author:

Chen Chuheng1ORCID,Lu Cheng1,Viswanathan Vidya2,Maveal Brandon3,Maheshwari Bhunesh3,Willis Joseph13,Madabhushi Anant245

Affiliation:

1. Department of Biomedical Engineering Case Western Reserve University Cleveland OH USA

2. Wallace H. Coulter Department of Biomedical Engineering Georgia Institute of Technology and Emory University Atlanta GA USA

3. Department of Pathology University Hospitals Cleveland Medical Center and Case Western Reserve University Cleveland OH USA

4. Radiology and Imaging Sciences, Biomedical Informatics (BMI) and Pathology Georgia Institute of Technology and Emory University Atlanta GA USA

5. Atlanta Veterans Administration Medical Center Atlanta GA USA

Abstract

AbstractLiver is one of the most common sites for metastases, which can occur on account of primary tumors from multiple sites of origin. Identifying the primary site of origin (PSO) of a metastasis can help in guiding therapeutic options for liver metastases. In this pilot study, we hypothesized that computer extracted handcrafted (HC) histomorphometric features can be utilized to identify the PSO of liver metastases. Cellular features, including tumor nuclei morphological and graph features as well as cytoplasm texture features, were extracted by computer algorithms from 175 slides (114 patients). The study comprised three experiments: (1) comparing and (2) fusing a machine learning (ML) model trained with HC pathomic features and deep learning (DL)‐based classifiers to predict site of origin; (3) identifying the section of the primary tumor from which metastases were derived. For experiment 1, we divided the cohort into training sets composed of primary and matched liver metastases [60 patients, 121 whole slide images (WSIs)], and a hold‐out validation set (54 patients, 54 WSIs) composed solely of liver metastases of known site of origin. Using the extracted HC features of the training set, a combination of supervised machine classifiers and unsupervised clustering was applied to identify the PSO. A random forest classifier achieved areas under the curve (AUCs) of 0.83, 0.64, 0.82, and 0.64 in classifying the metastatic tumor from colon, esophagus, breast, and pancreas on the validation set. The top features related to nuclear and peri‐nuclear shape and textural attributes. We also trained a DL network to serve as a direct comparison to our method. The DL model achieved AUCs for colon: 0.94, esophagus: 0.66, breast: 0.79, and pancreas: 0.67 in identifying PSO. A decision fusion‐based strategy was deployed to fuse the trained ML and DL classifiers and achieved slightly better results than ML or DL classifier alone (colon: 0.93, esophagus: 0.68, breast: 0.81, and pancreas: 0.69). For the third experiment, WSI‐level attention maps were also generated using a trained DL network to generate a composite feature similarity heat map between paired primaries and their associated metastases. Our experiments revealed that epithelium‐rich and moderately differentiated tumor regions of primary tumors were quantitatively similar to paired metastatic tumors. Our findings suggest that a combination of HC and DL features could potentially help identify the PSO for liver metastases while at the same time also potentially identify the spatial sites of origin for the metastases within primary tumors.

Funder

National Cancer Institute

National Center for Research Resources

National Institute of Biomedical Imaging and Bioengineering

U.S. Department of Veterans Affairs

DOD Prostate Cancer Research Program

DOD Peer Reviewed Cancer Research Program

AstraZeneca

Publisher

Wiley

Subject

Pathology and Forensic Medicine

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