PROJECT CYCLE

Cycle 1: Justifying the Need for Biologically Synthesized DHA-PC

Design

To understand the need for producing DHA-PC and why biological synthesis is the most suitable method, a plan is made to collect consumer and industry data. This includes exploring market demand for PC-DHA, evaluating the challenges of krill oil extraction, and assessing public perceptions of synthetic versus natural products.

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Two key actions are implemented:

  1. Survey: Distribute a questionnaire to consumers, targeting their knowledge and preferences regarding DHA-PC. The survey aims to measure demand, pricing concerns, and potential resistance to chemically synthesized products.
  2. Industry Consultation: Engage with experts at Liaoyu Group, a leading fisheries company, to discuss the krill oil supply chain. Gather data on supply limitations, labor costs, environmental issues like overfishing, and the inefficiency of capturing krill for DHA-PC production.

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Learn

The findings reveal several critical points:

  1. High demand, limited supply: There is strong consumer demand for PC-DHA, but the supply chain for krill oil cannot meet this demand due to high costs and sustainability concerns.
  2. Resistance to chemical synthesis: Survey participants express distrust of chemically synthesized PC-DHA, highlighting the need for safer, more natural alternatives.
  3. Biological synthesis required: Given these insights, biological synthesis of PC-DHA emerges as the most viable solution, offering a sustainable and environmentally friendly way to meet growing demand while overcoming the challenges of krill oil extraction.

Design

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Test

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Cycle 3: Selecting Subtypes of LACS according to Homology and Affinity

Design

Underlining the key concerns when making subtype selection:
Now that we have confirmed to engineer the enzyme of LACS to provide a novel PC-DHA synthesizing solution, we are to find a specific LACS as our target to further optimize.
The first factor we considered is homology to the target algae Schizochytrium Limacinum. A protein with a specific function may have different subtypes in different species, with varying sequence differences. These differences in sequence may further lead to differences in structures, with a possible result that a protein from one species cannot successfully be expressed in another species. Though we aim to use Schizochytrium Limacinum as the production chassis, the LACS of Schizochytrium Limacinum has not been characterized. Therefore, we hope that the object of our protein engineering is a subtype that can have better homology to the LACS of Schizochytrium Limacinum.
Another factor we took into consideration was the subtype's affinity to DHA. LACS, short for Long chain Acyl-CoA Synthetase, catalyzes the reaction of CoA with several types of fatty acids that differ in length and degree of unsaturation, varying from 16 carbon (16C) to 24 carbon (24C). A certain subtype of LACS shows different selectivity towards different substrates, and we wanted to ensure that our candidate had shown enough affinity to DHA (22C).

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Constructing a Phylogenetic tree to screen homologous subtype: LACS consists of a whole family of enzymes from different species, and we want to select candidate LACS subtypes in species with the closest relation to our target algae. As LACS serves as an important role in fatty acid metabolic pathways, its existence has been proven in a variety of species, ranging from prokaryotes like bacteria, to eukaryotes like plants and mammals. Having our target algae, Schizochytrium Limacinum, identified to be used in manufacturing, we want the engineer object enzyme to be a subtype of LACS that has close phylogeny to our target algae. A large set of characterized subtypes of LACS in protein databases were screened out, and we first conducted phylogenetic analysis. A phylogenetic tree was constructed to study the evolutionary relationships of selected subtypes, from which we selected a few subtypes with the closest phylogeny to Schizochytrium Limacinum.

Modification Figure 4
Figure 1 | The phylogenetic tree included a set of LACS subtype sequences that are closely homologous to algal LACS. Closer graphical distance indicates closer homology. The three chosen enzyme subtypes, LACS1, czLACS5, and LACS6, were highlighted in the phylogenetic tree, showing close homology to each other.

Test

Verifying subtypes' affinity and selecting subtypes that show preference to DHA:
Our second round of selection seeks solid evidence of selectivity. LACS, which is the abbreviation for long-chain acyl-CoA synthetase, shows different activity towards fatty acids of varying lengths, ranging from C16 to C24. DHA is a fatty acid containing 22 carbon atoms (22C). Before we finally opt for a certain subtype, we want to verify that it has shown activity towards 22C in previous research. From the selected set of subtypes from our first round of selection, we then launched a test with reference to the literature. For each subtype with close phylogeny to our target algae, we read through the literature to seek past conducted experiments on 22C with tangible results of 22C activity as proof.

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Confirming the selection of LACS1, 5, and 6:
To sum up our efforts in screening subtypes, we constructed a phylogenetic tree as the first round and verified affinity to DHA as the second round. The first round screened out a few LACS homologous to Schizochytrium limacinum. The second round of literature review helped us to identify three subtypes with evident activity, including one from Arabidopsis thaliana, one from Hondaea fermentalgiana, and one from Chromochloris zofingiensis, marked as LACS1, LACS6, and czLACS5 respectively.

Cycle 4: Testing Affinity of LACS Candidates in Lab by Evaluating YB525 Growth

Design

The objective of this cycle is to qualitatively analyze the growth curve of the YB525 yeast strain (which we borrowed from Professor Zhu's lab) and assess the substrate affinity of three enzymes:

Build

Several experimental groups are set up with YB525 strain cultures:

  1. 16-carbon and 18-carbon fatty acids: Supplement groups with C16 (palmitic acid) and C18 (stearic acid) to evaluate their impact on growth recovery.
  2. DHA (22-carbon fatty acid): A group with DHA supplementation to assess its effects on growth compared to shorter-chain fatty acids.

Test

Multiple growth curves are generated under the various conditions:

Plasmid Figure 5
Figure 2 | The figure depicts the growth curves of LACS1 (BBa_K5255000), czLACS5 BBa_K5255001, and LACS6BBa_K5255002 following their introduction into strain YB525 via an inducible expression medium augmented with palmitic acid (16:0), stearic acid (18:0), and DHA (22:4), respectively, for a 60-hour incubation period. (A) The graph depicts the growth curves of YB525-LACS1 in a medium supplemented with palmitic acid (16:0), stearic acid (18:0), and DHA (22:4). (B) The graph illustrates the growth curves of YB525-czLACS5 in a medium supplemented with palmitic acid (16:0), stearic acid (18:0), and DHA (22:4). (C) The graph depicts the growth curve of YB525-LACS6 in a medium supplemented with palmitic acid (16:0), stearic acid (18:0), and DHA (22:4). (D) The graph depicts the growth curves of YB525-LACS1, YB525-czLACS5, and YB525-LACS6 in a medium supplemented with DHA (22:4).

Learn

The experiment reveals several insights:

  1. LACS1 affinity for DHA: Preliminary analysis suggests that LACS1 has a higher affinity for DHA, as growth recovery is observed when DHA is supplemented, though not as fast as with C16 and C18.
  2. Metabolic preference: The faster recovery in growth with C16 and C18 suggests that YB525 or the LACS enzymes may preferentially utilize these shorter-chain fatty acids more efficiently than DHA. However, the wild-type LACS1 shows the highest preference compared to Czlacs5 and LACS6. Therefore, we choose to use LACS1 as our target gene.

Cycle 5: Engineering LACS1 Enzyme by Modeling to Improve Catalytic Activity

Design

Our project aims to enhance the catalytic activity of the enzyme LACS through conducting single-site mutation. We plan to apply protein modeling approaches to analyze which site to mutate. We will approach this from three perspectives:

  1. A novel approach of optimizing mRNA.
  2. Based on the basic properties of enzymatic reactions.
  3. Based on the specific mechanism of our target enzyme, LACS.

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Approaches Based on mRNA

We applied several traditional approaches together with novel analytic methods for optimizing mRNA and verified improvement in structure by running computations.

Approaches Based on the Basic Properties of Enzymatic Reactions

We adopted several analytic methods to find promising mutagenesis sites by exploiting the protein's structural features and other important properties. Our methods included optimizing sites approximately 7 Å to 10 Å away from the active site. See Modeling/Integrated Protein Engineering/Semi-Rational Approaches for details.

Approaches Based on the Specific Mechanism of Our Target Enzyme LACS

We conducted a literature review to understand and determine the specific methods for selecting mutagenesis sites corresponding to the specific mechanism.

Test

To make the enzyme more specific for substrate catalysis, we decided to focus on optimizing sites based on known reaction mechanisms. For further screening of effective site mutations, we verified several properties of LACS, such as the stability of the protein after single-site mutagenesis, and simulated the process of substrate binding to select sites that have a higher possibility of improving from the previously chosen candidate sites.

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Chosen Mutagenesis Plots

In this cycle, we have successfully chosen several single-site mutation sequences of LACS1 that showed a consistent increase in activity in our multiple modeling approaches. These will be subjected to subsequent enzymatic activity assays.

Systematic Analysis of Mutagenesis Candidates

Additionally, for czLACS5 and LACS6 that were excluded in the previous cycle due to insufficient affinity, we have also identified several promising single-site mutation plots that show increased activity in modeling simulations. We attached candidates that have not yet been verified in vitro together with corresponding modeling analytic results, which can be characterized in the future to further enhance LACS's catalytic activity.


Cycle 6: Determining the Optimal Assay for LACS Activity Measurement

Design

The goal of this cycle is to select the most suitable methods for measuring LACS enzyme activity. After evaluating several options, two methods were chosen:

  1. NADH-coupled enzyme assays
  2. LC-MS for directly measuring DHA consumption

The NADH-coupled assay is based on linking the LACS reaction to a subsequent reaction that consumes NADH, allowing for indirect measurement of LACS activity by monitoring NADH depletion. LC-MS will provide a direct quantification of DHA substrate levels, giving a more accurate picture of LACS's ability to catalyze DHA.

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The experimental protocols are established for both selected methods:

  1. NADH-coupled assay: This method uses NADH as an indicator of the enzymatic reaction. As LACS catalyzes the conversion of DHA to DHA-CoA, the subsequent reaction depletes NADH, which can be measured spectrophotometrically through absorbance at 340 nm.
  2. LC-MS analysis: This method directly measures the depletion of DHA in the reaction mixture, allowing for precise quantification of the substrate's consumption.

Test

The protocols are tested to measure LACS activity:
The NADH-coupled assay is performed to monitor NADH consumption over time, providing an indirect but rapid measurement of enzyme activity.

Evolution Figure 7
Figure 3 | This diagram depicts the enzymatic activity of MLacs1 after NADH enzyme coupling. The activity of MLacs was calculated by calculating the rate of absorbance change at 340nm

LC-MS is used to directly quantify DHA reduction in the reaction mixture, allowing for a more detailed and accurate assessment of LACS efficiency.

Evolution Figure 7
Figure 4 | This is the result of using LC-MS to detect the change amount of DHA before and after the reaction. The blue one is the peak of DHA in the negative control (NC) without LACS1enzyme addition, and the red is the peak of DHA in the remaining samples after 2min of LACS1 (BBa_K5255000) enzyme addition reaction. The peak area represents the relative amount of DHA in the sample. Therefore, by calculating the front and rear peak areas, DHA consumption is 81%.

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The LC-MS method is finally chosen for its rapid, simple application and more direct results. However, the results reveal some limitations:

Cycle 7: Performing Simulative Knockout of Bypass in Schizochytrium limacinum

Design

For time limitation, in the lab we only verified our modeling result of enzymatic modification. So this section focuses on how to estimate the production of PC-DHA in Schizochytrium limacinum. With reference to common practices of cellular global simulation, we use a model that characterizes the metabolic network for Schizochytrium called iCY1170_DHA, and estimated the production based on this model, hoping to use the algorithm of optforce to find potential knockout targets.

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We use the iCY1170_DHA model to run flux balance analysis, setting the PC-DHA production as the objective function, aiming to find the maximum PC-DHA production rate in this organism. Then we run the optforce algorithm to get the MustL and MustLL of Schizochytrium, based on these "Must" sets to figure out the strategy to perform gene knockout.

Test

After running the FBA, the PC-DHA production is 0.0245 (mmol/gDW/h). Optforce returns 2 MustL and MustLL targets. According to our result, after knocking out the MAT, the production of PC-DHA increased to 250% of the original, with the balanced production at 0.0623 (mmol/gDW/h), compared to the wild type at 0.0245 (mmol/gDW/h). This computation shows that performing a knockout of the bypass will significantly increase the production of our target product, DHA-PC.

Pathway Figure 1
Figure 5 | Schizochytrium limacinum main pathway and bypass metabolic maps

Learn

By using GEMS, we can roughly estimate the production of PC-DHA in Schizochytrium limacinum after knocking out the bypass. In the future, we will conduct experiments with Schizochytrium limacinum to determine if this engineering method is useful.

EXPERIMENT CYCLE

Cycle 1: Experimental Evaluation of YB525 Growth and LACS Enzyme Substrate Affinity

Design

The aim of this experiment is to quantitatively assess the growth curve of the YB525 yeast strain and investigate the substrate affinity of three enzymes (BBa_K5255000) (BBa_K5255001) (BBa_K5255002) towards different fatty acids. Specifically, the study evaluates whether these LACS enzymes demonstrate higher affinity for DHA (22-carbon fatty acid) compared to shorter-chain fatty acids like C16 and C18.

Build

The experimental setup includes the following groups, each subjected to different fatty acid conditions:

a. Control Group: No external fatty acids are added to the medium to establish baseline growth.

b. C16 and C18 Groups: Palmitic acid (C16) and stearic acid (C18) are supplemented to examine their effects on promoting cell growth and recovery.

c. DHA Group: DHA (docosahexaenoic acid, a 22-carbon fatty acid) is added to evaluate the enzyme affinity for longer-chain polyunsaturated fatty acids.

Growth curves for YB525 under these various conditions will be recorded at regular time intervals to analyze how quickly the strain adapts and grows in each environment.

Test

Growth data was collected in the form of OD600 measurements over time to generate multiple growth curves:

Pathway Figure 1
Figure 6 | The figure depicts the growth curves of LACS1 (BBa_K5255000), Czlacs5 (BBa_K5255001), LACS6 (BBa_K5255002) following their introduction into strain YB525 via an inducible expression medium augmented with palmitic acid (16:0), stearic acid (18:0), and DHA (22:4), respectively, for a 60-hour incubation period. (A) The graph depicts the growth curves of YB525-LACS1 in a medium supplemented with palmitic acid (16:0), stearic acid (18:0), and DHA (22:4). (B) The graph illustrates the growth curves of YB525-czLACS5 in a medium supplemented with palmitic acid (16:0), stearic acid (18:0), and DHA (22:4). (C) The graph depicts the growth curve of YB525-LACS6 in a medium supplemented with palmitic acid (16:0), stearic acid (18:0), and DHA (22:4). (D) The graph depicts the growth curves of YB525-LACS1, YB525-czLACS5, and YB525-LACS6 in a medium supplemented with DHA (22:4).

Learn

Analysis of the growth curves reveals key insights into LACS enzyme functionality and substrate preference:

a. LACS1’s affinity for DHA: Preliminary findings may indicate that LACS1 (BBa_K5255000) has a measurable affinity for DHA, as growth does recover, although at a slower pace compared to C16 and C18.

b. YB525’s reliance on external fatty acids: The slow growth in the control group underscores the strain’s dependence on external fatty acids for robust growth and metabolic functions.

c. Metabolic processing of fatty acids: Faster growth recovery in the presence of C16 and C18 implies that YB525 or the LACS enzymes favor shorter-chain fatty acids for cellular metabolism, potentially making DHA a less preferred substrate in comparison.

Cycle 2: Construction of Expression System in YB525 and LC-MS Detection

Design

The goal is to express LACS1 (BBa_K5255000) in Saccharomyces cerevisiae InvSC1 and detect the resulting products using LC-MS to validate LACS1's enzymatic function. The experiment constructed a plasmid with LACS1 (BBa_K5255000) under the GAL1 inducible promoter for expression in yeast. LC-MS analysis was designed to detect and quantify the specific metabolites produced by LACS1 (BBa_K5255000). Positive and negative controls were established to compare metabolic differences.

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The plasmid was then transformed into the YB525 strain, and yeast transformants were selected using uracil-deficient medium.

Test

Protein Expression and Induction:

Pathway Figure 1
Figure 7 | This is a western blot of the induced expression YB525 strain. NC was a negative control, which was the result of uninduced strain pressure crushing. The sample supernatant is the centrifugal supernatant after pressure crushing, and the precipitate is the corresponding precipitate. The whole cell is the protein result before pressure crushing. The results showed that YB525 contained the target protein LACS1 (BBa_K5255000).

LC-MS Product Detection :
Prepare yeast cell extracts and analyze them using LC-MS. Identify and quantify specific metabolites related to LACS1 (BBa_K5255000) activity by comparing results from positive and negative controls.

Pathway Figure 1
Figure 8 | This is the result of the LC-MS assay of the enzyme catalyzed product. In sample is the supernatant after induced cell breakage, while NC is the supernatant after non-induced cell breakage. An equal amount of internal standard C16-CoA is added to NC and sample respectively. The peak area represents the relative amount of the corresponding substance. It can be inferred that DHA-CoA was produced in yeast YB525 after induction.

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Through the data, we found that when the same amount of internal standard is added, the amount of C16-CoA detected in NC is about 10 times that in the sample, while the corresponding amount of DHA-CoA detected is 1.5 times. It can therefore be inferred that new DHA-CoA is produced in the sample.

However, the process of extracting and purifying the protein in Saccharomyces cerevisiae is extremely challenging, so in order to save time for the experiment, we decided to re-express the protein in E. coli and carry out subsequent protein purification as well as testing for enzyme activity.

Cycle 3: Construction of Expression System in BL21(DE3)

Design

The purpose of this cycle is to verify the function of LACS1 (BBa_K5255000) protein. We construct the plasmid pET21a(+)-LACS1 to express our target protein. There is a C-terminal His-tag for easy purification via fast protein liquid chromatography.

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Test

Pathway Figure 1
Figure 9 | This is a western blot of the induced expression strain. "before" is the sample before ultrasonic cracking, and the first supernatant and the second supernatant are the results of centrifugation once and twice, respectively, after ultrasonic cracking. Precipitate is the precipitation after centrifugation. The results showed that LACS1 (BBa_K5255000) was mainly insoluble protein in the precipitation.

Purify Protein

Pathway Figure 1
Figure 10 | Coomassie brilliant blue stained gel (A) and Western blot (B) of LACS1 proteins purified from BL21(DE3) by fast protein liquid chromatography and separated by SDS-PAGE. Lane 1-2: Samples from Elution step, with the target protein indicated by the arrow (77.7 kDa)

Learn

It can be seen from the results of SDS and western blot that after preliminary purification, the protein in our sample is not pure. Therefore, we need to perform anion chromatography to obtain a more pure target protein (77.7 kDa).

Cycle 4: Anion Chromatography Purification of the Protein Sample

Design

In this step, the aim is to improve the purity of the target protein through secondary purification using anion exchange chromatography.

Build

Once the protein is expressed and initially purified using a primary method, it must be prepared for secondary purification. This preparation involves buffer exchange or dialysis into the chosen low-salt binding buffer to remove any excess salt or impurities that may interfere with binding. After preparation, the anion exchange column is packed and equilibrated with the binding buffer to ensure the column is ready to retain the target protein.

Test

During the testing phase, the protein sample was loaded onto the anion exchange column, allowing the negatively charged protein to bind to the resin. A salt gradient was applied to the column, causing the bound proteins to elute. Fractions were collected throughout the elution process, and western blot was used to detect the purity of the protein.

Pathway Figure 1
Figure 11 | This is the results of the protein purified by anion chromatography. The numbers (from 1 to 9) represent the different treatment groups after protein concentration. It shows the relative high purity of our protein (77.7 kDa) after anion chromatography.

Learn

We found relatively higher purity after anion chromatography purification. Afterwards, we combined three samples that have a high concentration of protein.

Cycle 5: Construction of Expression System in C43(DE3)

Design

According to the literature, the C43(DE3) strain is more suitable for expressing membrane proteins compared to other strains like BL21(DE3), as it reduces toxicity and allows for higher yields of functional proteins. Based on this, we chose to use C43(DE3) to express a mutant form of the target protein. The gene encoding the mutant protein is cloned into a suitable expression vector, such as pET21a(+), under the T7 promoter. A His-tag is included for subsequent purification steps.

Build

The C43(DE3) cells are transformed with the constructed pET21a-mutant Lacs1 plasmid following the same protocol as with BL21(DE3). The cells are grown in LB medium and selected with ampicillin. Once the transformants are confirmed by colony PCR, protein expression is induced using IPTG. After induction, the cells are harvested, and the protein is purified using fast protein liquid chromatography, similar to what was done with BL21(DE3).

Test

Protein expression is analyzed by SDS-PAGE to determine whether the mutant protein is expressed at the desired level. Due to the relatively high purity of MLACS1 (BBa_K5255003) , we only performed fast protein liquid chromatography to obtain the target protein.

Pathway Figure 1
Figure 12 | This is a western blot of the induced expression of MLACS1 (BBa_K5255003). The whole cell before ultrasonic lysis, the supernatant and lower precipitation after ultrasonic lysis were respectively taken for western blot. The results show that there are obvious target bands in lower precipitation and the size is correct. In addition, there are fewer impurity bands.

Learn

The protein expressed by the C43(DE3) strain was relatively pure and did not require further purification. The protein obtained in this process was suitable for the subsequent enzyme activity determination process.

Cycle 6: Liquid Chromatography-Mass Spectrometry for LACS1 Activity

Design

The aim was to compare the activity of LACS1 (BBa_K5255000) and MLACS1 (BBa_K5255003) in catalyzing the formation of DHA-CoA from DHA. A method with high sensitivity and resolution that allows both qualitative and quantitative analysis was chosen: liquid chromatography-mass spectrometry (LC-MS). Liquid chromatography (LC) uses a column to separate the components of a sample based on properties such as polarity and molecular weight, so that different components reach the detector at different times. Mass spectrometry (MS) detects the separated compounds by ionizing the sample molecules to produce charged ions, which are separated and analyzed based on the mass-to-charge ratio (m/z) to quantify the components in the sample.

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The samples used for LC-MS consisted of a reaction system of the purified enzymes LACS1 (BBa_K5255000) and MLACS1 (BBa_K5255003), which reacted for two minutes with the substrates DHA, ATP, and coenzyme A, respectively, before the reaction was terminated. After extraction of the mixture, DHA was found in the bottom layer of the extract, while the product DHA-CoA was in the upper layer. Th

Pathway Figure 1
Figure 13 | This is the result of testing the product with LC-MS and searching for molecular weight. The blue peaks are the result of the MLACS1 (BBa_K5255003)sample and the red peaks are the result of the LACS1 (BBa_K5255000)) sample. Below the baseline is the result of blank without enzyme added. The peak area represents the relative amount of the corresponding material. The results show that the catalytic activity of the mutant protein (BBa_K5255003) is significantly higher than that of the wild-type protein LACS1 (BBa_K5255000). Data below the baseline are not analyzed.

Learn

The findings of the study indicated that the system comprising MLACS (BBa_K5255003) exhibited a markedly enhanced reaction rate in comparison to the system containing the LACS enzyme. Consequently, it was postulated that the proteins generated by the modeling group demonstrated a considerably elevated level of activity against DHA.

MODELING CYCLE

Cycle 1: Unknown Reaction Mechanism Single-Site Mutation

Design:

We have conducted a literature review to understand how to optimize proteins in cases where the reaction mechanism is unknown, and how to apply alanine scanning in the optimization of proteins for enzymes with an unknown reaction mechanism.

Build:

Test:

We found that the specificity was not strong, which may indicate that the current optimization strategy does not adequately consider the key amino acids involved in the specific binding with the substrate DHA.

Learn:

To enhance specificity, we will delve into the intrinsic reaction mechanism of LACS and consult relevant literature. This will assist us in more accurately selecting optimization sites specific to the substrate DHA, thereby improving the protein's affinity for the substrate and catalytic efficiency.

Cycle 2: Known Reaction Mechanism Single-Site Mutation

Design:

Through literature research, we have identified strategies for protein optimization, including mutations in key structural motifs such as the P-motif, A-motif, and L-motif, as well as changes in gating amino acids and adjustments to charge properties to enhance substrate affinity.

Build:

Test:

After selecting mutation sequences with FoldX, we simulate the binding of mutant proteins with substrates through AutoDock and select single-point mutation sequences with better binding performance.

Pathway Figure 1
Figure 14 | A summary of the docking results of LACS1, LACS5, and LACS6 wild types and mutants with DHA. The blue bars represent the binding energies of the wild-type LACS1 enzyme in complex with DHA, while the orange, gray, and yellow bars denote the binding energies of the mutant LACS1 enzymes with DHA. The annotations below clarify the mutation sites corresponding to each color. It is observable that the binding affinity of the LACS1 enzyme to DHA has significantly improved following the mutation compared to the other LACS isoforms.

Learn

A multi-step screening process ensures that the mutation sequences obtained from modeling are highly reliable.

Cycle 3: In Vitro Enzymatic Activity Assay

h3>Design:

We intend to analyze the enzymatic activity data obtained from our experiments to determine the Michaelis constant (Km) for both the wild-type and mutant enzymes.

Build:

We will derive the double reciprocal form of the Michaelis-Menten equation, which will facilitate the simplification of the experimental data analysis process.

Test:

We plan to perform graphical fitting of the experimental data to ascertain the optimal model parameters.

Learn:

The Km values measured in our experiments are obtained through in vitro assays of purified enzymes, a method that eliminates the interference of potential intracellular substances, thus providing a more accurate reflection of the enzyme's intrinsic property changes. However, as our project is aimed at producing this enzyme within Schizochytrium sp., these Km values may not directly correspond to the enzyme's Km when reacting within the organism. Nonetheless, this data remains invaluable, offering insights into the enzyme's property alterations and aiding us in further optimizing the enzyme's expression and activity within Schizochytrium sp.

Cycle 4: Enzyme Activity from In Vitro to In Vivo

Design:

Our objective is to develop a formula that can translate the in vitro determined Km of an enzyme into its in vivo Km within Schizochytrium sp., thereby providing an approximation of the enzyme's Km within the organism.

Build:

Adhering to the assumptions of the Michaelis-Menten equation and considering the presence of multiple potential substrates in the target pathway, we w

Pathway Figure 1
Figure 15 |The competitive substrate Michaelis-Menten equation derived can transform the Michaelis constants measured in vitro into those in vivo.

Test

We will review literature to find relevant data and, for areas lacking direct data, make reasonable order-of-magnitude assumptions based on analogous data, which will then be incorporated into the formula.

Learn

Given that the determination of Km and the consideration of substrates that significantly impact the reaction, the data obtained from the formula holds substantial significance and allows for a rough estimation of the target product's yield. Although the formula has its limitations, such as being based on the Michaelis-Menten equation and requiring compliance with its assumptions, and also overlooks substrates that have a minor impact on the selectivity of the reaction, the final data obtained from the formula may deviate from the actual situation. Nevertheless, overall, the data derived from the formula is of great reference value for the final yield of the target within Schizochytrium sp.

References

  1. X.-H. Yue, W.-C. Chen, Z.-M. Wang, P.-Y. Liu, X.-Y. Li, C.-B. Lin, S.-H. Lu, F.-H. Huang, and X. Wan, Journal of Agricultural and Food Chemistry, 2019, 67, 9683–9693.
  2. T. Baumgarten, S. Schlegel, S. Wagner, M. Löw, J. Eriksson, I. Bonde, M. J. Herrgård, H. J. Heipieper, M. H. H. Nørholm, D. J. Slotboom, and J.-W. De Gier, Scientific Reports, DOI:10.1038/srep45089.