Surrey researchers Sign in
Atomic force microscopy based assessment of multimechanical cellular properties for classification of graded bladder cancer cells and cancer early diagnosis using machine learning analysis
Journal article   Open access   Peer reviewed

Atomic force microscopy based assessment of multimechanical cellular properties for classification of graded bladder cancer cells and cancer early diagnosis using machine learning analysis

Xinyao Zhu, Rui Qin, Kaige Qu, Zuobin Wang, Xuexia Zhao and Wei Xu
Acta Biomaterialia, Vol.158, pp.358-373
01/03/2023
PMID: 36581006

Abstract

Adhesiveness Cancerization gradation Cellular classification Cellular elastic modulus (CEM) Cellular mechanical phenotype (CMP) Cellular membrane tension (CMT) Work of adhesion (WoA)
pdf
Atomic Force Microscopy–based assessment - AAM3.51 MBDownloadView
Author's Accepted Manuscript CC BY-NC-ND V4.0 Open Access
url
https://doi.org/10.1016/j.actbio.2022.12.035View
Published (Version of record)

Metrics

62 File views/ downloads
13 Record Views

Details

Usage Policy