Round-Robin sequential forward selection algorithm for prostate cancer classification and diagnosis using multispectral imagery
Abstract
This paper proposes an automatic classification system for the use in prostate cancer diagnosis. The system aims to detect and classify prostatic tissue textures captured from microscopic samples taken from needle biopsies. Biopsies are usually analyzed by a trained pathologist with different grades of malignancy typically corresponding to different structural patterns as well as apparent textures. In the context of prostate cancer diagnosis, four major groups have to be accurately recognized: stroma, benign prostatic hyperplasia, prostatic intraepithelial neoplasia, and prostatic carcinoma. Recently, multispectral imagery has been proposed as a new image acquisition modality which unlike conventional RGB-based light microscopy allows the acquisition of a large number of spectral bands within the visible spectrum, resulting in a large feature vector size. Many features in the initial feature set are irrelevant to the classification task and are correlated with each other, resulting in an increase in the computational complexity and a reduction in the recognition rate. In this paper, a Round-Robin (RR) sequential forward selection RR-SFS is used to address these problems. RR is a technique for handling multi-class problems with binary classifiers by training one classifier for each pair of classes. The experimental results demonstrate this finding when compared with classical method based on the multiclass SFS and other ensemble methods such as bagging/boosting with decision tree (C4.5) classifier where it is shown that RR-SFS method achieves the best results with a classification accuracy of 99.9%.
Collections
- Computer Science & Engineering [2402 items ]
Related items
Showing items related by title, author, creator and subject.
-
Prostate-based biofluids for the detection of prostate cancer: A comparative study of the diagnostic performance of cell-sourced RNA biomarkers
Roberts, Matthew J.; Richards, Renee S.; Chow, Clement W.K.; Doi, Suhail A.R.; Schirra, Horst Joachim; Buck, Marion; Samaratunga, Hemamali; Perry-Keene, Joanna; Payton, Diane; Yaxley, John; Lavin, Martin F.; Gardiner, Robert A.... more authors ... less authors ( Elsevier , 2016 , Article)Background Prostate cancer (PCa) diagnosis requires improvement with the aid of more accurate biomarkers. Postejaculate urethral washings (PEUW) could be a physiological equivalent to urine obtained following rectal prostatic ... -
Multi-stage intra-patient template matching for prostate detection in MR volumes
Jahed, Zeinab; Shaban, Khaled; Tizhoosh, Hamid R. (2013 , Conference Paper)Detecting objects, a significant task in computer vision, is accompanied with many challenges. When we focus on medical images, the challenges of detecting an organ or a tumour exhibit their own specific difficulties. ... -
68 Ga-PSMA PET/CT tumour intensity pre-operatively predicts adverse pathological outcomes and progression-free survival in localised prostate cancer
Roberts, Matthew J.; Morton, Andrew; Donato, Peter; Kyle, Samuel; Pattison, David A.; Thomas, Paul; Coughlin, Geoff; Esler, Rachel; Dunglison, Nigel; Gardiner, Robert A.; Doi, Suhail A.; Emmett, Louise; Yaxley, John... more authors ... less authors ( Springer , 2020 , Article)© 2020, Springer-Verlag GmbH Germany, part of Springer Nature. Purpose: Prostate-specific membrane antigen (PSMA) positron emission tomography (PSMA-PET) improves prostate cancer staging. Intraprostatic PSMA intensity may ...