Machine Learning Establishes Single-Cell Calcium Dynamics as an Early Indicator of Antibiotic Response.
Christian T MeyerMegan P JewellEugene J MillerJoel M KraljPublished in: Microorganisms (2021)
Changes in bacterial physiology necessarily precede cell death in response to antibiotics. Herein we investigate the early disruption of Ca2+ homeostasis as a marker for antibiotic response. Using a machine learning framework, we quantify the temporal information encoded in single-cell Ca2+ dynamics. We find Ca2+ dynamics distinguish kanamycin sensitive and resistant cells before changes in gross cell phenotypes such as cell growth or protein stability. The onset time (pharmacokinetics) and probability (pharmacodynamics) of these aberrant Ca2+ dynamics are dose and time-dependent, even at the resolution of single-cells. Of the compounds profiled, we find Ca2+ dynamics are also an indicator of Polymyxin B activity. In Polymyxin B treated cells, we find aberrant Ca2+ dynamics precedes the entry of propidium iodide marking membrane permeabilization. Additionally, we find modifying membrane voltage and external Ca2+ concentration alters the time between these aberrant dynamics and membrane breakdown suggesting a previously unappreciated role of Ca2+ in the membrane destabilization during Polymyxin B treatment. In conclusion, leveraging live, single-cell, Ca2+ imaging coupled with machine learning, we have demonstrated the discriminative capacity of Ca2+ dynamics in identifying antibiotic-resistant bacteria.
Keyphrases
- single cell
- machine learning
- cell death
- induced apoptosis
- protein kinase
- cell cycle arrest
- rna seq
- high resolution
- healthcare
- stem cells
- artificial intelligence
- high throughput
- bone marrow
- small molecule
- deep learning
- multidrug resistant
- big data
- smoking cessation
- amino acid
- single molecule
- newly diagnosed
- replacement therapy