Journal of Pathology Informatics

RESEARCH ARTICLE
Year
: 2019  |  Volume : 10  |  Issue : 1  |  Page : 30-

Statistical analysis of survival models using feature quantification on prostate cancer histopathological images


Jian Ren1, Eric A Singer2, Evita Sadimin3, David J Foran5, Xin Qi5 
1 Department of Electrical and Computer Engineering, Rutgers University, Piscataway, NJ, USA
2 Department of Pathology and Laboratory Medicine, Section of Urologic Oncology; Center for Biomedical Imaging and Informatics, Rutgers Cancer Institute of New Jersey, New Brunswick, NJ, USA
3 Department of Pathology and Laboratory Medicine, Section of Urologic Oncology, Rutgers Cancer Institute of New Jersey, New Brunswick, NJ, USA

Correspondence Address:
Dr. Xin Qi
Center for Biomedical Imaging and Informatics, Rutgers Cancer Institute of New Jersey, New Brunswick, NJ
USA

Background: Grading of prostatic adenocarcinoma is based on the Gleason scoring system and the more recently established prognostic grade groups. Typically, prostate cancer grading is performed by pathologists based on the morphology of the tumor on hematoxylin and eosin (H and E) slides. In this study, we investigated the histopathological image features with various survival models and attempted to study their correlations. Methods: Three texture methods (speeded-up robust features, histogram of oriented gradient, and local binary pattern) and two convolutional neural network (CNN)-based methods were applied to quantify histopathological image features. Five survival models were assessed on those image features in the context with other prostate clinical prognostic factors, including primary and secondary Gleason patterns, prostate-specific antigen levels, age, and clinical tumor stages. Results: Based on statistical comparisons among different image features with survival models, image features from CNN-based method with a recurrent neural network called CNN-long-short-term memory provided the highest hazard ratio of prostate cancer recurrence under Cox regression with an elastic net penalty. Conclusions: This approach outperformed the other image quantification methods listed above. Using this approach, patient outcomes were highly correlated with the histopathological image features of the tissue samples. In future studies, we plan to investigate the potential use of this approach for predicting recurrence in a wider range of cancer types.


How to cite this article:
Ren J, Singer EA, Sadimin E, Foran DJ, Qi X. Statistical analysis of survival models using feature quantification on prostate cancer histopathological images.J Pathol Inform 2019;10:30-30


How to cite this URL:
Ren J, Singer EA, Sadimin E, Foran DJ, Qi X. Statistical analysis of survival models using feature quantification on prostate cancer histopathological images. J Pathol Inform [serial online] 2019 [cited 2019 Oct 23 ];10:30-30
Available from: http://www.jpathinformatics.org/article.asp?issn=2153-3539;year=2019;volume=10;issue=1;spage=30;epage=30;aulast=Ren;type=0