Mechanomics Biomarker for Cancer Cells Unidentifiable through Morphology and Elastic Modulus.
Hongxin WangHan ZhangBo DaDabao LuRyo TamuraKenta GotoIkumu WatanabeDaisuke FujitaNobutaka HanagataJunko KanoTomoki NakagawaMasayuki NoguchiPublished in: Nano letters (2021)
Cellular mechanical properties are potential cancer biomarkers used for objective cytology to replace the current subjective method relying on cytomorphology. However, heterogeneity among intra/intercellular mechanics and the interplay between cytoskeletal prestress and elastic modulus obscured the difference detectable between malignant and benign cells. In this work, we collected high density nanoscale prestress and elastic modulus data from a single cell by AFM indentation to generate a cellular mechanome. Such high dimensional mechanome data was used to train a malignancy classifier through machine learning. The classifier was tested on 340 single cells of various origins, malignancy, and degrees of similarity in morphology and elastic modulus. The classifier showed instrument-independent robustness and classification accuracy of 89% with an AUC-ROC value of 93%. A signal-to-noise ratio 8 times that of the human-cytologist-based morphological method was also demonstrated, in differentiating precancerous hyperplasia cells from normal cells derived from the same lung cancer patient.
Keyphrases
- induced apoptosis
- machine learning
- single cell
- cell cycle arrest
- high density
- endoplasmic reticulum stress
- deep learning
- atomic force microscopy
- rna seq
- oxidative stress
- magnetic resonance imaging
- magnetic resonance
- depressive symptoms
- mass spectrometry
- case report
- high resolution
- young adults
- data analysis
- climate change
- patient reported outcomes
- pluripotent stem cells
- fine needle aspiration
- cell adhesion