TY - JOUR
T1 - AFM-based nanomechanics and machine learning for rapid and non-destructive detection of bacterial viability
AU - Xu, Xiaoyan
AU - Feng, Haowen
AU - Zhao, Ying
AU - Shi, Yunzhu
AU - Feng, Wei
AU - Loh, Xian Jun
AU - Vancso, G. Julius
AU - Guo, Shifeng
N1 - Publisher Copyright:
© 2024 The Author(s)
PY - 2024/4/17
Y1 - 2024/4/17
N2 - Detecting bacterial viability remains a critical necessity across the pharmaceutical, medical, and food sectors. Yet, a rapid, non-destructive approach for distinguishing between intact live and dead bacteria remains elusive. Here, this work introduces a robust and accessible methodology that integrates atomic force microscopy (AFM) imaging, quantitative nano-mechanics, and machine learning algorithms to assess the survival of gram-negative (Escherichia coli [E. coli]) and gram-positive (Staphylococcus aureus [S. aureus]) bacteria. The results reveal distinctive changes in ultraviolet-killed E. coli and S. aureus manifesting intact morphological structures but increased stiffness. Three specific features—bacterial deformation, spring constant, and Young's modulus—extracted from AFM force spectroscopy are established as pivotal inputs for a machine-learning-based stacking classifier. Trained on extensive AFM datasets encompassing known bacterial viability, this methodology demonstrates exceptional predictive accuracy exceeding 95% for both E. coli and S. aureus. These results underscore its universal applicability, rapidity, and non-destructive nature, positioning it as a definitive method for universally detecting bacterial viability.
AB - Detecting bacterial viability remains a critical necessity across the pharmaceutical, medical, and food sectors. Yet, a rapid, non-destructive approach for distinguishing between intact live and dead bacteria remains elusive. Here, this work introduces a robust and accessible methodology that integrates atomic force microscopy (AFM) imaging, quantitative nano-mechanics, and machine learning algorithms to assess the survival of gram-negative (Escherichia coli [E. coli]) and gram-positive (Staphylococcus aureus [S. aureus]) bacteria. The results reveal distinctive changes in ultraviolet-killed E. coli and S. aureus manifesting intact morphological structures but increased stiffness. Three specific features—bacterial deformation, spring constant, and Young's modulus—extracted from AFM force spectroscopy are established as pivotal inputs for a machine-learning-based stacking classifier. Trained on extensive AFM datasets encompassing known bacterial viability, this methodology demonstrates exceptional predictive accuracy exceeding 95% for both E. coli and S. aureus. These results underscore its universal applicability, rapidity, and non-destructive nature, positioning it as a definitive method for universally detecting bacterial viability.
KW - Atomic Force Microscopy (AFM)
KW - Bacterial viability
KW - Force spectroscopy
KW - Machine Learning (ML)
KW - Quantitative nano-mechanics
UR - http://www.scopus.com/inward/record.url?scp=85189476738&partnerID=8YFLogxK
U2 - 10.1016/j.xcrp.2024.101902
DO - 10.1016/j.xcrp.2024.101902
M3 - Article
AN - SCOPUS:85189476738
SN - 2666-3864
VL - 5
JO - Cell Reports Physical Science
JF - Cell Reports Physical Science
IS - 4
M1 - 101902
ER -