Litcius/Paper detail

Prostate cancer tissue classification by multiphoton imaging, automated image analysis and machine learning

Egleidson F. A. Gomes, Eduardo Paulino, Mário F. R. de Lima, L. A. Reis, Giovanna Paranhos, Marcelo Mamede, Francis G. J. Longford, Jeremy G. Frey, Ana Paula

2023Journal of Biophotonics12 citationsDOI

Abstract

Prostate carcinoma, a slow-growing and often indolent tumour, is the second most commonly diagnosed cancer among men worldwide. The prognosis is mainly based on the Gleason system through prostate biopsy analysis. However, new treatment and monitoring strategies depend on a more precise diagnosis. Here, we present results by multiphoton imaging for prostate tumour samples from 120 patients that allow to obtain quantitative parameters leading to specific tumour aggressiveness signatures. An automated image analysis was developed to recognise and quantify stromal fibre and neoplastic cell regions in each image. The set of metrics was able to distinguish between non-neoplastic tissue and carcinoma areas by linear discriminant analysis and random forest with accuracy of 89% ± 3%, but between Gleason groups of only 46% ± 6%. The reactive stroma analysis improved the accuracy to 65% ± 5%, clearly demonstrating that stromal parameters should be considered as additional criteria for a more accurate diagnosis.

Topics & Concepts

Prostate cancerLinear discriminant analysisStromal cellProstateMedicineRandom forestBiopsyCancerCarcinomaPathologyArtificial intelligenceOncologyComputer scienceInternal medicineSpectroscopy Techniques in Biomedical and Chemical ResearchMolecular Biology Techniques and ApplicationsProstate Cancer Diagnosis and Treatment
Prostate cancer tissue classification by multiphoton imaging, automated image analysis and machine learning | Litcius