| Literature DB >> 27200091 |
Loreto M Valenzuela1, Doyle D Knight2, Joachim Kohn3.
Abstract
Prediction of the dynamic properties of water uptake across polymer libraries can accelerate polymer selection for a specific application. We first built semiempirical models using Artificial Neural Networks and all water uptake data, as individual input. These models give very good correlations (R (2) > 0.78 for test set) but very low accuracy on cross-validation sets (less than 19% of experimental points within experimental error). Instead, using consolidated parameters like equilibrium water uptake a good model is obtained (R (2) = 0.78 for test set), with accurate predictions for 50% of tested polymers. The semiempirical model was applied to the 56-polymer library of L-tyrosine-derived polyarylates, identifying groups of polymers that are likely to satisfy design criteria for water uptake. This research demonstrates that a surrogate modeling effort can reduce the number of polymers that must be synthesized and characterized to identify an appropriate polymer that meets certain performance criteria.Entities:
Year: 2016 PMID: 27200091 PMCID: PMC4856915 DOI: 10.1155/2016/6273414
Source DB: PubMed Journal: Int J Biomater ISSN: 1687-8787
Subset of the library of L-tyrosine-derived polyarylates used in this study.
| Polymera |
|
| Polymer set for model | Predictions |
|---|---|---|---|---|
| Poly(DTO sebacate) | 123 ± 1 | 16 | ● | |
| Poly(DTB adipate) | 111 ± 3 | 42 | ● | |
| Poly(DTO succinate) | 84 ± 6 | 43 | ● | |
| Poly(DTE adipate) | 126 ± 7 | 59 | ● | |
| Poly(DTE glutarate) | 80 ± 1 | 64 | ● | |
| Poly(DTB succinate) | 145 ± 11 | 67 | ● | |
| Poly(HTH sebacate) | 64 ± 5 | 23 | ● | |
| Poly(HTH adipate) | 87 ± 2 | 40 | ● | |
| Poly(DTM sebacate) | 126 ± 4 | 45 | ● | |
| Poly(DTiP adipate) | 144 ± 2 | 55 | ● | |
| Poly(DTM adipate) | 99 ± 3 | 67 | ● | |
| Poly(HTE succinate) | ★ | 78 | ● | |
| Poly(DTO adipate) | 132 ± 2 | 26 | ● | |
| Poly(DTsB | 79 ± 3 | 45 | ● | |
| Poly(DTsB | 86 ± 3 | 46 | ● | |
| Poly(DTM R(+) methyladipate | 68 ± 1 | 53 | ● | |
| Poly(DTBn adipate) | 69 ± 8 | 61 | ● | |
| Poly(HTE adipate) | 37 ± 4 | 61 | ● | |
|
| ||||
| Poly(DTO suberate) | 21 | ● | ||
| Poly(DTH suberate) | 24 | ● | ||
| Poly(HTH suberate) | 27 | ● | ||
| Poly(DTO glutarate) | 32 | ● | ||
| Poly(DTiB sebacate) | 33 | ● | ||
| Poly(DTH R(+) methyladipate | 33 | ● | ||
| Poly(DTH L(−) methyladipate | 33 | ● | ||
| Poly(DTH adipate) | 34 | ● | ||
| Poly(DTB R(+) methyladipate | 35 | ● | ||
| Poly(DTB L(−) methyladipate | 35 | ● | ||
| Poly(DTB suberate) | 37 | ● | ||
| Poly(DTO diglycolate) | 40 | ● | ||
| Poly(DTBn sebacate) | 42 | ● | ||
| Poly(DTH glutarate) | 43 | ● | ||
| Poly(DTH diglycolate) | 45 | ● | ||
| Poly(DTsB | 45 | ● | ||
| Poly(DTsB | 46 | ● | ||
| Poly(DTsB | 46 | ● | ||
| Poly(DTsB | 46 | ● | ||
| Poly(DTsB | 50 | ● | ||
| Poly(DTsB | 50 | ● | ||
| Poly(DTB glutarate) | 50 | ● | ||
| Poly(DTH succinate) | 53 | ● | ||
| Poly(DTM L(−) methyladipate | 53 | ● | ||
| Poly(HTE suberate) | 54 | ● | ||
| Poly(DTiP R(+) methyladipate | 54 | ● | ||
| Poly(DTiP L(−) methyladipate | 54 | ● | ||
| Poly(DTM suberate) | 55 | ● | ||
| Poly(DTBn R(+) methyladipate | 55 | ● | ||
| Poly(DTBn L(−) methyladipate | 55 | ● | ||
| Poly(DTiB adipate) | 56 | ● | ||
| Poly(DTE R(+) methyladipate | 63 | ● | ||
| Poly(DTE L(−) methyladipate | 63 | ● | ||
| Poly(HTE R(+) methyladipate | 63 | ● | ||
| Poly(HTE L(−) methyladipate | 63 | ● | ||
| Poly(DTB diglycolate) | 64 | ● | ||
| Poly(DTiB succinate) | 75 | ● | ||
aThe “∗” symbol indicates the presence of more than one chiral center in the polymer repeat unit.
bMolecular weight (M ) was measured by THF-GPC (mean value of three different films ± standard deviation (SD)).
cThe “★” symbol indicates the polymers that did not dissolve in THF and, thus, M could not be measured, and degradation could not be measured.
dGlass transition temperature (T ) was measured by DSC for the dry polymer before pressing.
Equilibrium water uptake for 18 polymers of the L-tyrosine-derived polyarylate library.
| Polymera | Equilibrium water uptake (%) |
|---|---|
| Poly(DTB adipate) | 18.2 ± 1.2 |
| Poly(DTB succinate) | 4.0 ± 0.3 |
| Poly(DTBn adipate) | 32.2 ± 7.2 |
| Poly(DTE adipate) | 36.2 ± 3.2 |
| Poly(DTE glutarate) | 29.6 ± 3.4 |
| Poly(DTiP adipate) | 27.6 ± 1.0 |
| Poly(DTM adipate) | 14.5 ± 3.5 |
| Poly(DTM sebacate) | 12.3 ± 2.7 |
| Poly(DTO adipate) | 6.1 ± 0.3 |
| Poly(DTO sebacate) | 2.7 ± 0.4 |
| Poly(DTO succinate) | 3.5 ± 0.6 |
| Poly(HTE adipate) | 7.8 ± 1.1 |
| Poly(HTE succinate) | 43.1 ± 10.6 |
| Poly(HTH adipate) | 18.0 ± 2.1 |
| Poly(HTH sebacate) | 2.3 ± 0.4 |
| Poly(DTM R(+) methyladipate) | 90.1 ± 8.8 |
| Poly(DTsB R(+) glutarate) | 97.4 ± 4.1 |
| Poly(DTsB R(+) methyladipate) | 136.5 ± 10.0 |
aPolymers are ordered by name used in the descriptor set.
Figure 1Scheme of experimental method for surrogate models of water uptake.
Best descriptors and their variability within the training set and within the complete set of 56 polymers.
| Model | Descriptor | SD for polymers of the model | SD for the complete library |
|---|---|---|---|
| All data points | Hydrophilic factor | 0.246 | 0.212 |
| SMR_VSA6 | 0.291 | 0.242 | |
| GGI3 | 0.227 | 0.264 | |
| MATS3m | 0.256 | 0.273 | |
| C-003 | 0.394 | 0.478 | |
| G2m vacuum | 0.231 | 0.255 | |
|
| |||
| WUeq | nCt | 0.287 | 0.316 |
| Mor25m water | 0.212 | 0.238 | |
| R8p+ vacuum | 0.243 | 0.242 | |
Summary of models for water uptake.
| Model |
| Number of descriptors |
| Within experimental variability (training) |
| Within experimental variability (test) |
|---|---|---|---|---|---|---|
| All data points | 189 | 6+ time | 0.92 | 30/189 (16%) | 0.83 | 3/18 (17%) |
| WUeq | 18 | 3 | 0.97 | 12/18 (67%) | 0.78 | 9/18 (50%) |
Figure 2Prediction versus experimental values for WUeq for polymers as part of training (■) and test (△) sets. Black line represents x = y. Values are presented as mean value ± SD of predictions (y-error) ± SD of experimental values (x-error).
Figure 3Predictions of equilibrium water uptake over the remaining 38 polymers of the polymer library. Values are presented as mean value ± SD of the predicted value for each training/test set combination. Polymers are ordered from highest to the lowest water uptake predicted values. Solid lines separate areas of very high, high, medium, and low water uptake polymers.