White Paper: Decoupling Performance from Population Dynamics

  • BGM-en
  • 2025/10/31

A New Paradigm for High-Throughput Strain Screening
Using Solid-Culture Growth Monitoring

1. Introduction: The Strategic Importance of Strain Engineering

The global bioeconomy, encompassing sectors from sustainable chemicals and biofuels to pharmaceuticals, is fundamentally powered by bacterial strain engineering. Advances in synthetic biology, particularly CRISPR-Cas genome editing and sophisticated genetic circuits, have granted engineers unprecedented control over microbial metabolism. This control allows for the rational design of strains capable of synthesizing high-value products like commodity chemicals, therapeutic proteins, and complex natural products.

The workflow for this innovation adheres to the Design-Build-Test-Learn (DBTL) cycle. While Design (computational modeling) and Build (DNA synthesis and multiplex editing) have achieved high levels of automation and precision, the Test phase remains the critical bottleneck, severely limiting the speed and scale of industrial bioprocess development.

2. Current Challenges in High-Throughput Screening

The primary barrier to strain optimization is the inability to efficiently and accurately identify rare, high-performing genetic variants within vast, heterogeneous libraries.

2.1. The Confounding Factor of Liquid Culture Screening

Standard industrial screening protocols rely heavily on liquid culture in microtiter plates, where optical density (OD600) is the primary growth measurement. This bulk-level, population-averaged approach is fundamentally flawed for screening diverse, engineered libraries for two key reasons:

  1. Phenotypic Masking: Engineered strains often bear a metabolic burden due to the energy and resource consumption required to produce the desired compound. This burden typically results in a reduced growth rate compared to non-producing or wild-type cells. In a mixed liquid culture, the high-producing, slow-growing “elite” cells are quickly out-competed and numerically diluted by faster-growing, non-producing variants. The bulk OD600 and metabolite concentration signal is therefore masked or averaged down by the majority of low-producers [1].
  2. Lack of Single-Cell Traceability: Once a positive signal is detected in a well, it represents the average performance of hundreds of thousands of cells. There is no simple way to physically isolate the specific, superior cell from the mixed population without resorting to complex, often low-throughput, single-cell techniques like droplet microfluidics [3].

This dynamic means that the desired rare variants—the one in a million cells that successfully balance high product titer with adequate growth fitness—are effectively lost, making the discovery of truly optimized strains a statistical and technical challenge.

2.2. The Inconsistency of Strain Degeneration

A second major issue is the instability of engineered strains. In large-scale, continuous fermentation environments, there is a constant evolutionary pressure for the cells to revert to a fitter, non-producing state. Any spontaneous mutation that eliminates the metabolically costly production pathway grants a growth advantage, allowing the non-producer to quickly dominate the bioreactor, a phenomenon known as strain degeneration. Reliable screening must identify strains with robust, stable performance, a trait that is difficult to distinguish from short-term high production using only endpoint liquid assays [2].

3. The Potential of Solid-Culture Growth Monitoring 

To overcome the inherent limitations of liquid culture analysis, the industry is increasingly looking toward automated, high-resolution monitoring of bacterial colonies on solid agar media. ScanLag uses automated scanning and image analysis to measure bacterial colony growth and lag time [1]. On the other hand, Bacterial Growth Monitor (BGM) uses an LED array and a two-dimensional sensor to capture the transmitted light and calculate the optical density of solid plates [5] .  Both methods offer a non-invasive, high-throughput solution that addresses the core problems of single-cell traceability and competitive exclusion. 

3.1. Mechanism and Advantages of Colony Monitoring

Solid-culture monitoring systems use automated imaging and computer vision to periodically capture images or transmitted lights of agar plates over time. Software analyzes these images to track the dynamics of individual colonies, each of which originates from a single cell.

FeatureLiquid Culture Screening (OD600 )Solid Culture Monitoring (colony image or OD600)Advantage over Liquid Culture
ResolutionBulk (population average)Single-Cell
Derived Colony
Directly links phenotype
to single genotype [1].
CompetitionHigh (fast-growers dominate)Zero
(Colonies are isolated)
Rare, slow-growing elite strains are preserved.
Data OutputLag Time, Max Growth RateLag Time, Growth Rate, Colony Size/ShapeProvides a multidimensional phenotype
High-ThroughputHigh (96/384 wells)Very High (hundreds to thousands
of colonies per plate)
Screens millions of variants across arrays of plates [7, 8].

3.2. Solving the Rare Strain Identification Bottleneck

Solid-culture monitoring directly resolves the two primary issues of liquid culture:

  1. Isolation Preserves the Rare Variant: Because each colony is spatially separated, it acts as a monoclonal culture. The slow-growing, high-producing strain is protected from competition and allowed to form its colony. The system can then use its imaging data to identify a colony that exhibits a phenotype correlated with superior performance (e.g., specific size, morphology, or color change on differential media).
  2. Multidimensional Phenomics and Stability: The time-lapse imaging captures the entire growth trajectory of each clone, providing critical metrics:
    • Lag Time: A measure of the cell’s adaptation and robustness.
    • Growth Rate (Colony Area vs. Time): Directly measures fitness.
    • Colony Morphology (Size, Shape, Texture, Color): Can indicate plasmid loss or metabolic pathway efficiency, particularly when using differential or indicator media (e.g., detecting metabolite production via a localized pH or color change) [4, 7, 9].

By using automated colony picking robots in conjunction with the monitoring data, the specific, high-value colony can be retrieved and cultured with confidence, significantly increasing the probability of identifying and recovering the elite strains. This capability effectively decouples the fitness phenotype (growth rate) from the productivity phenotype (metabolite production), which is essential for optimizing industrial strains [6].

4. Conclusion and Future Outlook

The challenge of efficiently screening engineered bacterial libraries has become the defining constraint in the field of metabolic and synthetic biology. The inherent limitations of bulk, liquid-culture analysis—namely phenotypic masking and the loss of rare, high-performing strains due to growth competition—demand a paradigm shift toward single-cell resolution screening.

Automated solid-culture growth monitoring systems provide a highly scalable, non-invasive technology to meet this demand. By enabling the quantitative, time-resolved analysis of individual colonies, this technology ensures that:

  1. Each variant’s performance is assessed in isolation, preventing the competitive loss of high-value strains.
  2. High-dimensional data (lag time, growth rate, morphology) is generated for millions of clones, significantly enriching the dataset for AI/ML-driven Learn cycles.
  3. The most promising strains can be precisely tracked and physically recovered, transforming the Test phase from a bottleneck into an accelerated engine of discovery.

Integrating these systems with advanced robotics and computational biology is the most direct path to realizing the full industrial potential of bacterial strain engineering, moving bioproduction from a slow, iterative process to a rapid, data-driven discipline.

5. References

  1. Levin-Reisman, I., et al. (2014). ScanLag: High-throughput Quantification of Colony Growth and Lag Time. JoVE (Journal of Visualized Experiments), (92), e51921.
  2. Jiang, Y., et al. (2023). Strain and process engineering toward continuous industrial fermentation. Frontiers of Chemical Science and Engineering, 17(6), 632–641.
  3. Jin, C., et al. (2022). High-throughput identification and quantification of single bacterial cells in the microbiota. Nature Communications, 13(1), 896.
  4. Jang, S. S., et al. (2024). Advancing microbial engineering through synthetic biology. Journal of Microbiology, 62(5), 589–599.
  5. Taketani, M., et al. (2023). Image Sensor-Based Real Time Monitoring of Bacterial Growth on Agar Plates. IDWeek, Boston.
  6. Molecular Devices. (2025). Clone Screening Solutions, Automated Colony Picking.
  7. Li, Q., et al. (2024). MCount: An automated colony counting tool for high-throughput microbiology. PLoS One, 19(11), e0311242.
  8. Alvizo, O., et al. (2023). Optimizing the strain engineering process for industrial-scale production of bio-based molecules. Current Opinion in Biotechnology, 84, 103004.
  9. Nakada, M., et al. (2023). A New Thin-Film Transistor Image Sensor for Estimation of Bacterial Colony Species on Agar Plates. IDWeek, Boston.