Razan N. Alnahhas’s research while affiliated with Boston University and other places

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Publications (19)


Long-term homeostasis in microbial consortia via auxotrophic cross-feeding
  • Preprint
  • File available

January 2025

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13 Reads

Nicolas E Grandel

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Amanda M Alexander

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Xiao Peng

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[...]

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Matthew R Bennett

Synthetic microbial consortia are collections of multiple strains or species of engineered organisms living in a shared ecosystem. Because they can separate metabolic tasks among different strains, synthetic microbial consortia have myriad applications in developing biomaterials, biomanufacturing, and biotherapeutics. However, synthetic consortia often require burdensome control mechanisms to ensure that the members of the community remain at the correct proportions. This is especially true in continuous culture systems in which slight differences in growth rates can lead to extinctions. Here, we present a simple method for controlling consortia proportions using cross-feeding in continuous auxotrophic co-culture. We use mutually auxotrophic \emph{E.\ coli} with different essential gene deletions and regulate the growth rates of members of the consortium via cross-feeding of the missing nutrients in each strain. We demonstrate precise regulation of the co-culture steady-state ratio by exogenous addition of the missing nutrients. We also model the co-culture's behavior using a system of ordinary differential equations that enable us to predict its response to changes in nutrient concentrations. Our work provides a powerful tool for consortia proportion control with minimal metabolic costs to the constituent strains.

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Evaluating the predictive power of combined gene expression dynamics from single cells on antibiotic survival

November 2024

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3 Reads

Heteroresistance can allow otherwise drug-susceptible bacteria to survive and resume growth after antibiotic exposure. This temporary form of antibiotic tolerance can be caused by the upregulation of stress response genes or a decrease in cell growth rate. However, it is not clear how expression of multiple genes contributes to the tolerance phenotype. By using fluorescent reporters for stress related genes, we conducted real time measurements of expression prior to, during, and after antibiotic exposure. We first identified relationships between growth rate and reporter levels based on auto and cross correlation analysis, revealing consistent patterns where changes in growth rate were anticorrelated with fluorescence following a delay. We then used pairs of stress gene reporters and time lapse fluorescence microcopy to measure the growth rate and reporter levels in cells that survived or died following antibiotic exposure. Using these data, we asked whether combined information about reporter expression and growth rate could improve our ability to predict whether a cell would survive or die following antibiotic exposure. We developed a Bayesian inference model to predict how the combination of dual reporter expression levels and growth rate impact ciprofloxacin survival in Escherichia coli. We found clear evidence of the impact of growth rate and the gadX promoter activity on survival. Unexpectedly, our results also revealed examples where additional information from multiple genes decreased prediction accuracy, highlighting an important and underappreciated effect that can occur when integrating data from multiple simultaneous measurements.




Indirect Enrichment of Desirable, but Less Fit Phenotypes, from a Synthetic Microbial Community Using Microdroplet Confinement

March 2023

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10 Reads

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4 Citations

ACS Synthetic Biology

Spatial structure within microbial communities can provide nearly limitless opportunities for social interactions and are an important driver for evolution. As metabolites are often molecular signals, metabolite diffusion within microbial communities can affect the composition and dynamics of the community in a manner that can be challenging to deconstruct. We used encapsulation of a synthetic microbial community within microdroplets to investigate the effects of spatial structure and metabolite diffusion on population dynamics and to examine the effects of cheating by one member of the community. The synthetic community was composed of three strains: a "Producer" that makes the diffusible quorum sensing molecule (N-(3-oxododecanoyl)-l-homoserine lactone, C12-oxo-HSL) or AHL; a "Receiver" that is killed by AHL; and a Non-Producer or "cheater" that benefits from the extinction of the Receivers, but without the costs associated with the AHL synthesis. We demonstrate that despite rapid diffusion of AHL between microdroplets, the spatial structure imposed by the microdroplets allows a more efficient but transient enrichment of more rare and slower-growing Producer subpopulations. Eventually, the Non-Producer population drove the Producers to extinction. By including fluorescence-activated microdroplet sorting and providing sustained competition by the Receiver strain, we demonstrate a strategy for indirect enrichment of a rare and unlabeled Producer. The ability to screen and enrich metabolite Producers from a much larger population under conditions of rapid diffusion provides an important framework for the development of applications in synthetic ecology and biotechnology.


Advances in linking single-cell bacterial stress response to population-level survival

January 2023

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50 Reads

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21 Citations

Current Opinion in Biotechnology

Stress response mechanisms can allow bacteria to survive a myriad of challenges, including nutrient changes, antibiotic encounters, and antagonistic interactions with other microbes. Expression of these stress response pathways, in addition to other cell features such as growth rate and metabolic state, can be heterogeneous across cells and over time. Collectively, these single-cell-level phenotypes contribute to an overall population-level response to stress. These include diversifying actions, which can be used to enable bet-hedging, and coordinated actions, such as biofilm production, horizontal gene transfer, and cross-feeding. Here, we highlight recent results and emerging technologies focused on both single-cell and population-level responses to stressors, and we draw connections about the combined impact of these effects on survival of bacterial communities.


Indirect enrichment of desirable, but less fit phenotypes, from a synthetic microbial community using microdroplet confinement

January 2023

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41 Reads

Spatial structure within microbial communities can provide nearly limitless opportunities for social interactions and are an important driver for evolution. As metabolites are often molecular signals, metabolite diffusion within microbial communities can affect the composition and dynamics of the community in a manner that can be challenging to deconstruct. We used encapsulation of a synthetic microbial community within microdroplets to investigate the effects of spatial structure and metabolite diffusion on population dynamics and to examine the effects of cheating by one member of the community. The synthetic community was comprised of three strains: a ‘Producer’ that makes the diffusible quorum sensing molecule ( N -(3-Oxododecanoyl)-L-homoserine lactone, C12-oxo-HSL) or AHL; a ‘Receiver’ that is killed by AHL and a Non-Producer or ‘cheater’ that benefits from the extinction of the Receivers, but without the costs associated with the AHL synthesis. We demonstrate that despite rapid diffusion of AHL between microdroplets, the spatial structure imposed by the microdroplets allow a more efficient but transient enrichment of more rare and slower growing ‘Producer’ subpopulations. Eventually, the Non-Producer population drove the Producers to extinction. By including fluorescence-activated microdroplet sorting and providing sustained competition by the Receiver strain, we demonstrate a strategy for indirect enrichment of a rare and unlabeled Producer. The ability to screen and enrich metabolite Producers from a much larger population under conditions of rapid diffusion provides an important framework for the development of applications in synthetic ecology and biotechnology. Abstract Figure


Figure 2: Procedure for and typical results of bulk culture experiments. (A) The consortial I1-FFL circuit is mixed at different relative strain fractions, measured using plate reader, and measured for strain fractions using next-generation sequencing (NGS). (B,C,D) Fluorescence of each strain in the I1-FFL circuit at even strain fractions during one experiment with 6 technical replicates. Thick lines represent the mean of the 6 replicates. Red triangle indicates the time at which IPTG was added (120 minutes). (E,F,G) Mean fluorescence activity of the I1-FFL circuit at different strain fractions. The relative fraction of strain Z was fixed to 33% and the remaining 66% of the population was divided between strain X and strain Y as indicated. Red triangle indicates the time at which IPTG was added (120 minutes). For additional replicates see Appendix Fig. S4.
Figure 4: Generating pulses of constant height. (A) We selected strain fractions from the simplex that were predicted to have the same peak height and performed a bulk culture experiment using these strain fractions. To accurately pipette the required strain fractions, we performed a correction to account for systematic error in strain fraction observed in previous experiments. (B ) Target versus measured strain fractions of experiments with the correction applied and without the correction applied for strain X (C ) Model prediction of peak height based off of measured strain fraction compared to experimental data. Error bars represent three standard deviations of 6 technical replicates.(D,E,F ) Fluorescence of strain Z. (D) Model simulation based off of target fraction, (E ) Experimental data with peaks labeled using grey diamonds, (F ) Model simulation based off measured fraction with peaks labeled using blue circles. Red triangle indicates the time at which IPTG was added (120 minutes).
Tunable dynamics in a multi-strain transcriptional pulse generator

September 2022

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52 Reads

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1 Citation

A major challenge in synthetic biology is the manipulation of engineered gene circuits toward a specified behavior. This challenge becomes more difficult as synthetic systems become more complex by incorporating additional genes or strains. Here we demonstrate that circuit dynamics can be tuned in synthetic consortia through the manipulation of strain fractions within the community. To do this, we constructed a microbial consortium comprised of three strains of engineered Escherichia coli that, when co-cultured, use homoserine lactone (HSL) mediated intercellular signaling to create a multi-strain incoherent type-1 feedforward loop (I1-FFL). Like naturally occurring I1-FFL motifs in gene networks, this engineered microbial consortium acts as a pulse generator of gene expression. We demonstrated that the amplitude of the pulse can be easily tuned by adjusting the relative population fractions of the strains. We created a mathematical model for the temporal dynamics of the microbial consortium and, using this model, identified population fractions that produced desired pulse characteristics. Our work demonstrates that intercellular gene circuits can be effectively tuned simply by adjusting the starting fractions of each strain type.


Figure 1. Typical microscopy image sequence. We show five frames out of a total of 150 frames of an image sequence showing the dynamics of E. coli in a microfluidic device [18] (real laboratory image data). These cells are are about 1 µm in diameter and on average 3 µm in length, and they divide about every 30 min. The original images exported from the microscope are 0.11 µm/pixel. We report results for these real datasets in Section 4.
Stochastic Neural Networks for Automatic Cell Tracking in Microscopy Image Sequences of Bacterial Colonies

March 2022

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83 Reads

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6 Citations

Mathematical and Computational Applications

Our work targets automated analysis to quantify the growth dynamics of a population of bacilliform bacteria. We propose an innovative approach to frame-sequence tracking of deformable-cell motion by the automated minimization of a new, specific cost functional. This minimization is implemented by dedicated Boltzmann machines (stochastic recurrent neural networks). Automated detection of cell divisions is handled similarly by successive minimizations of two cost functions, alternating the identification of children pairs and parent identification. We validate the proposed automatic cell tracking algorithm using (i) recordings of simulated cell colonies that closely mimic the growth dynamics of E. coli in microfluidic traps and (ii) real data. On a batch of 1100 simulated image frames, cell registration accuracies per frame ranged from 94.5% to 100%, with a high average. Our initial tests using experimental image sequences (i.e., real data) of E. coli colonies also yield convincing results, with a registration accuracy ranging from 90% to 100%.


Segmentation and tracking of cells within a microcolony
(A) DeLTA pipeline consists of segmentation, tracking, and lineage reconstruction. (B) Segmentation example with phase contrast image containing an E. coli microcolony, which is input into a U-Net convolutional neural network to obtain segmentation results. (C) Histogram of cell lengths. Inset shows a zoomed-out version with outliers included. (D) Cell tracking between frames. Representative examples of cell tracking with and without division are shown with a phase contrast image of the ‘previous frame’ on the left, a phase contrast image of the ‘current frame’ in the middle, and a greyscale image of the ‘prediction’ on the right. The ‘current frame’ also shows the tracking prediction overlayed. The ‘prediction’ shows the U-Net output with the ground truth overlayed (S1 Fig). (E) Lineage reconstruction keeps track of cell lineages and records pole age. (F) Plot of cell lengths over time. Black line is a representative example of one cell’s length as it grows and divides; all cells in the microcolony are shown in grey.
Resistant and susceptible strains of E. coli on agarose pads containing an inhibitory concentration of tetracycline
(A) Phase contrast images and associated fluorescence overlays. RFP expressing cells contain a tetracycline resistance gene and GFP expressing cells do not. The magenta and green cell outlines in the fluorescence overlay represent the resistant and susceptible cells, respectively. Region of interest boxes show the areas represented in (B). (B) Representative examples of antibiotic resistant and susceptible cells tracked over time. (C) RFP and GFP fluorescence tracked for individual cells over time. (D) GFP fluorescence versus RFP fluorescence for single cells plotted against growth rate. Fluorescence values are the averages over all the frames for that cell. For growth rate calculations, only cells that were present at t = 150 min were tracked, which is a time point mid-to-late in the movie. The analysis omits those cells that enter the field of view after t = 150 min since the growth rates become noisier with less data. Three resistant cell outliers with growth rates of ~1.4 1/hr are omitted from this view.
Pole age and its impact on growth rate
(A) Schematic showing how poles are passed down during a division. When a cell divides, the newly formed poles are defined as the ‘new’ poles (white dot) whereas the poles that were passed down from the mother are defined as the ‘old’ poles (black dot). Scale bar, 2 μm. (B) Pole assignment schematic. When the mother cell with known poles divides, the daughter cell that inherits the mother’s old pole is denoted ‘O’ whereas the daughter that inherits the mother’s new pole is ‘N.’ For each generation, either an O or an N is appended to the pole history. (C) Growth rate within each generation. The growth rate of an individual cell is calculated for the period right after the mother’s division until right before the cell divides again. To reduce noise, only cells present for at least three frames were included in the analysis. Daughters (n = 11,246 cells; two tailed unpaired t-test; p-value *** ≤ 0.001), granddaughters (n = 10,726 cells; a one-way ANOVA with post hoc Tukey test used for statistical analysis. Statistical significance: ‘OO’ and ‘NO’ versus ‘NN’ and ‘ON’; p-value ** ≤ 0.01), and great granddaughters (n = 10,217 cells; a one-way ANOVA with post hoc Tukey test used for statistical analysis. Statistical significance: ‘OOO’ and ‘NOO’ versus ‘ONN’,’NNN’,’NON’, and ‘OON’; p-value * ≤ 0.05). Error bars show standard error of the mean.
DeLTA 2.0: A deep learning pipeline for quantifying single-cell spatial and temporal dynamics

January 2022

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269 Reads

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68 Citations

Improvements in microscopy software and hardware have dramatically increased the pace of image acquisition, making analysis a major bottleneck in generating quantitative, single-cell data. Although tools for segmenting and tracking bacteria within time-lapse images exist, most require human input, are specialized to the experimental set up, or lack accuracy. Here, we introduce DeLTA 2.0, a purely Python workflow that can rapidly and accurately analyze images of single cells on two-dimensional surfaces to quantify gene expression and cell growth. The algorithm uses deep convolutional neural networks to extract single-cell information from time-lapse images, requiring no human input after training. DeLTA 2.0 retains all the functionality of the original version, which was optimized for bacteria growing in the mother machine microfluidic device, but extends results to two-dimensional growth environments. Two-dimensional environments represent an important class of data because they are more straightforward to implement experimentally, they offer the potential for studies using co-cultures of cells, and they can be used to quantify spatial effects and multi-generational phenomena. However, segmentation and tracking are significantly more challenging tasks in two-dimensions due to exponential increases in the number of cells. To showcase this new functionality, we analyze mixed populations of antibiotic resistant and susceptible cells, and also track pole age and growth rate across generations. In addition to the two-dimensional capabilities, we also introduce several major improvements to the code that increase accessibility, including the ability to accept many standard microscopy file formats as inputs and the introduction of a Google Colab notebook so users can try the software without installing the code on their local machine. DeLTA 2.0 is rapid, with run times of less than 10 minutes for complete movies with hundreds of cells, and is highly accurate, with error rates around 1%, making it a powerful tool for analyzing time-lapse microscopy data.


Citations (11)


... To address this challenge, we implemented an incoherent type-1 feedforward loop (IFFL) to regulate the synthesis of the shared signal due to the network's ability to maintain the signal stable at low levels for an extended period, e.g., spanning >15 h in laboratory condition (LB medium). In the IFFL circuit, the input simultaneously activates and, through an intermediary molecule, inhibits the output protein, either a reporter protein or catalyst for synthesizing quorum-sensing (QS) signals that serve as shared signals ('Conceptual and Mathematical Examination of the IFFL Network Dynamics' in Methods) [24][25][26][27][28] . The IFFL circuit generates a shared signal that efficiently manages biosensor information, coupling the activities of bacterial consortia and integrating diverse cellular data, thereby ensuring the functionality of the collective system. ...

Reference:

Engineering coupled consortia-based biosensors for diagnostic
Tunable Dynamics in a Multistrain Transcriptional Pulse Generator
  • Citing Article
  • November 2023

ACS Synthetic Biology

... Various models have been developed to 760 understand the complex dynamics of microbial communities and 761 their emerging behaviors at the ecological level. Let us rely on 762 Lotka-Volterra models to account for the interspecies interactions 763 arising from competition in engineered consortia [70,91,97] and to 764 describe the qualitative behavior of our synthetic ecosystem under 765 study. We propose the following closed-loop dynamic model ...

Indirect Enrichment of Desirable, but Less Fit Phenotypes, from a Synthetic Microbial Community Using Microdroplet Confinement
  • Citing Article
  • March 2023

ACS Synthetic Biology

... Subsystems such as DNA metabolism, nucleosides and nucleotides, and RNA metabolism were lower compared to A. propionica, suggesting differences in genome replication, repair, and transcriptional machinery (Zhao et al. 2020;Armenta-Medina et al. 2014). The A. rubra strains showed slightly higher counts in stress response and virulence, disease, and defense, which may indicate better resilience to environmental stressors and potential interactions with other organisms (Sharma et al. 2017;Alnahhas and Dunlop 2023). ...

Advances in linking single-cell bacterial stress response to population-level survival
  • Citing Article
  • January 2023

Current Opinion in Biotechnology

... This reduces the burden on scientists and pathologists, accelerates research, and improves diagnostic accuracy in fields ranging from cancer detection to microbiology [14]. This was revealed in a research where 90-100% accuracy was obtained in microscopy of bacterial colonies using neuronal networks [15]. ...

Stochastic Neural Networks for Automatic Cell Tracking in Microscopy Image Sequences of Bacterial Colonies

Mathematical and Computational Applications

... Time-lapse movies were visually inspected using Fiji 2.14.0 to crop the region of interest around microcolonies and to remove later frames when cells overlapped. Cells were segmented and tracked using the DeLTA 2.0 deep learning-based pipeline 64 with the default pretrained models for segmentation and tracking. Time-lapse data analysis was performed using custom Python scripts adapted from ref. 65 (available at https://github.com/JLuneau/Pseudomonas_AgarPads_fliC). ...

DeLTA 2.0: A deep learning pipeline for quantifying single-cell spatial and temporal dynamics

... DeLTA was not included in this study because it operates similarly to MiSiC and was designed specifically for mother machine microfluidics analysis. DeLTA 2.0 was recently released to additionally segment confluent cell growth on agarose pads, but it remains quite similar to MiSiC in implementation 59 . PlantSeg could, in principle, be trained on bacterial micrographs, but we determined that its edge-focused design meant to segment bright plant cell wall features would not offer any advancements over the remaining U-net methods that we tested. ...

DeLTA 2.0: A deep learning pipeline for quantifying single-cell spatial and temporal dynamics

... Engineered multicellular systems harness the diverse abilities of individual populations, enabling cooperative interactions to accomplish complex tasks across various applications, including bioproduction 1 , healthcare 2 , and environmental monitoring 3 . For instance, synthetic consortia have been developed to address challenges in bacterial biosensor performance, including enhancing multi-target detection 4 and minimizing crosstalk between analytes 5,6 . These tasks often require large-scale gene circuits, which, when carried out by a single strain, can impose a burden on gene expression and deplete vital resources 7,8 . ...

Majority sensing in synthetic microbial consortia

... An IFFL motif (Fig. 2a) consists of three components: an initial regulator (X) that directly activates the target gene (Z) and indirectly represses it through an intermediate regulator (Y). IFFL motifs are commonly observed in natural gene networks and have been integrated into many synthetic biological systems, with a range of functionalities, including pulse generation 36,37 , amplitude band-pass filtering 38,39 , response time acceleration 40,41 , perfect adaptation and dosage gene stability 37,42 , fold change detection in input signals 43,44 , and analog-to-digital data conversion 45 . In this study, we engineered the IFFL circuit to exhibit sustained plateau-like stability. ...

Long-range tedatmporal coordination of gene expression in synthetic microbial consortia

Nature Chemical Biology

... Mutations in the DNA of a bacteria may occur due to mistakes when bacterial cells undergo binary fission [1,3] and can sometimes alter the functioning of its genes, leading to changes in their phenotype. These mutations facilitate the emergence of diversity within its population, which may improve the capacity of the bacteria to adapt to its changing environment [4][5][6][7]. When mutations occur in bacteria important for human health, harmful infections could arise. ...

Spatiotemporal Dynamics of Synthetic Microbial Consortia in Microfluidic Devices
  • Citing Article
  • July 2019

ACS Synthetic Biology

... Fluorescence coupled oscillating gene circuits in two E. coli strains were used to observe cellular interaction in microfluidic 2D cultivation chambers. Oscillating gene circuits in E. coli were recently also studied in a comparable setup by Alnahhas et al. [40]. Similar setups were used to investigate gene transfer via conjugation between different strains [42 ,50]. ...

Spatiotemporal dynamics of synthetic microbial consortia in microfluidic devices