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Second, for the selection model, we specified the weight function.
Thus, in the model, we specified Lis1 and DCX as regulators that stimulate and guide neuron motility and timing.
In the single refugium model, we specified divergence time as 0, which assumed a panmixia population derived from a single refugium.
In our final model, we specified soil treatment as a fixed effect and included one random effect where treatment was nested within column, within month.
In the model, we specified the numbers of PtdIns3KC3, PtdIns, WIPI1/2, ATG9 and Y LC3-I) (Table 1), and simulated the model to steadY LC3-I for a long Tableperiod (> 10,000 sec) andI = 4.48 × 10−6.
In our model, we specified that the critical size S2 (corresponding to saddle node of the lower branch SN2) is the cell size checkpoint and focused on the robustness of the size checkpoint.
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Based on the reward-mapping-enabled intermediate model, we specify reward structures in the composite base model which is built on three stochastic activity network reward models.
In the third model we specify cross-level interactions between the individual-level factors and geographic remoteness and area disadvantage.
Model 4: (Objective 4): In this model we specify cross-level interactions between the individual-level factors and geographic remoteness and area disadvantage.
Since we are looking at the change from baseline to follow-up within the same participants, the analytical model we specify is a t-test for dependent means.
For the mean hot and cold temperatures in the random effects compartment of the model, we specify p(μ H ) = p(μ C )∝1.
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Justyna Jupowicz-Kozak
CEO of Professional Science Editing for Scientists @ prosciediting.com