Nanoscale Prognosis of Colorectal Cancer Metastasis from AFM Image Processing of Histological Sections

Author:

Gavriil Vassilios1ORCID,Ferraro Angelo1,Cefalas Alkiviadis-Constantinos1ORCID,Kollia Zoe1,Pepe Francesco2ORCID,Malapelle Umberto2ORCID,De Luca Caterina2ORCID,Troncone Giancarlo2ORCID,Sarantopoulou Evangelia1ORCID

Affiliation:

1. National Hellenic Research Foundation, Theoretical and Physical Chemistry Institute, 48 Vassileos Constantinou Avenue, 11635 Athens, Greece

2. Dipartimento di Sanità Pubblica, Università Degli Studi di Napoli “Federico II”, via Pansini 5, 801301 Napoli, Italy

Abstract

Early ascertainment of metastatic tumour phases is crucial to improve cancer survival, formulate an accurate prognostic report of disease advancement, and, most importantly, quantify the metastatic progression and malignancy state of primary cancer cells with a universal numerical indexing system. This work proposes an early improvement to metastatic cancer detection with 97.7 nm spatial resolution by indexing the metastatic cancer phases from the analysis of atomic force microscopy images of human colorectal cancer histological sections. The procedure applies variograms of residuals of Gaussian filtering and theta statistics of colorectal cancer tissue image settings. This methodology elucidates the early metastatic progression at the nanoscale level by setting metastatic indexes and critical thresholds based on relatively large histological sections and categorising the malignancy state of a few suspicious cells not identified with optical image analysis. In addition, we sought to detect early tiny morphological differentiations indicating potential cell transition from epithelial cell phenotypes of low metastatic potential to those of high metastatic potential. This metastatic differentiation, which is also identified in higher moments of variograms, sets different hierarchical levels for metastatic progression dynamics.

Funder

National Hellenic Research Foundation

Publisher

MDPI AG

Subject

Cancer Research,Oncology

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