Computational Identification of Potential Novel Allosteric IHF Inhibitors Using QSAR Modeling to Inhibit Plasmid-Mediated Antibiotic Resistance
Abstract
1. Introduction
2. Results
2.1. Dataset Preparation
2.2. QSAR Modeling and Validation
2.3. Cluster Analysis and Selection of Representative Compound
2.4. Target Prediction
2.5. Docking Protocol
2.6. Molecular Dynamics Simulations
3. Discussion
4. Materials and Methods
4.1. Database and Calculation of Descriptors
4.2. Building and Analysis of the QSAR
4.3. Selection of Representative Compound and Target Identification
4.4. Docking and Molecular Dynamics Protocol
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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| ICCB-ID | Trivial-NAME | CID | APII | ICCB-ID | Trivial-NAME | CID | APII |
|---|---|---|---|---|---|---|---|
| ICCB-1 | Bromfenac | 60726 | 0.347 | ICCB-34 | Lonidamine | 39562 | 0.569 |
| ICCB-2 | NPPB | 4549 | 0.553 | ICCB-35 | MG-132 | 462382 | 0.409 |
| ICCB-3 | 8-Hydroxydaidzein | 5466139 | 0.367 | ICCB-36 | MK-2461 | 44137946 | 0.733 |
| ICCB-4 | AZD8055 | 25262965 | 0.347 | ICCB-37 | Alisertib | 24771867 | 0.382 |
| ICCB-5 | Amorolfine | 54260 | 0.648 | ICCB-38 | Laselipag | 9931891 | 0.328 |
| ICCB-6 | Aripiprazole | 60795 | 0.403 | ICCB-39 | FG 7142 | 4375 | 0.561 |
| ICCB-7 | Azacitidine | 9444 | 0.530 | ICCB-40 | BRN 2143451 | 201986 | 0.530 |
| ICCB-8 | MS-27330 | 6914573 | 0.523 | ICCB-41 | SCHEMBL9910611 | 6178305 | 0.545 |
| ICCB-9 | Baicalein | 5281605 | 0.469 | ICCB-42 | Oxaprozin | 4614 | 0.367 |
| ICCB-10 | CFTRinh 172 | 1554210 | 0.362 | ICCB-43 | Proflavine | 7099 | 0.444 |
| ICCB-11 | Cinchophen | 8593 | 0.352 | ICCB-44 | Pentamidine | 4735 | 0.658 |
| ICCB-12 | Carprofen | 2581 | 0.553 | ICCB-45 | Hezamidine | 65130 | 0.642 |
| ICCB-13 | CH55 | 6184667 | 0.530 | ICCB-46 | Piceatannol | 667639 | 0.638 |
| ICCB-14 | Chrysin | 5281607 | 0.450 | ICCB-47 | Pipemidic acid | 4831 | 0.611 |
| ICCB-15 | DCPIB | 10071166 | 0.415 | ICCB-48 | Pro-Banthine | 9279 | 0.432 |
| ICCB-16 | CHEMBL1618718 | 5378825 | 0.415 | ICCB-49 | Quinalizarin | 5004 | 0.319 |
| ICCB-17 | Dequalinium | 2993 | 0.409 | ICCB-50 | AC1LCVGT | 656717 | 0.367 |
| ICCB-18 | Diflunisal | 3059 | 0.495 | ICCB-51 | Rifabutina | 135415564 | 0.420 |
| ICCB-19 | Dobutamine | 36811 | 0.561 | ICCB-52 | SC58125 | 115239 | 0.415 |
| ICCB-20 | Efloxate | 8395 | 0.382 | ICCB-53 | SH-4-54 | 72188643 | 0.310 |
| ICCB-21 | FG 7142 | 4375 | 0.495 | ICCB-54 | Lintitript | 122077 | 0.393 |
| ICCB-22 | Febuxostat | 134018 | 0.481 | ICCB-55 | STX-0119 | 4253236 | 0.502 |
| ICCB-23 | Genistein | 5280961 | 0.398 | ICCB-56 | Sertaconazole | 200103 | 0.456 |
| ICCB-24 | Glyburide | 3488 | 0.577 | ICCB-57 | Shikonin | 479503 | 0.409 |
| ICCB-25 | Glimepiride | 3476 | 0.530 | ICCB-58 | DTXSID60587903 | 16760513 | 0.438 |
| ICCB-26 | Gliquidone | 91610 | 0.668 | ICCB-59 | TPCA-1 | 9903786 | 0.469 |
| ICCB-27 | Icatibant | 6918173 | 0.382 | ICCB-60 | Terbinafine | 1549008 | 0.387 |
| ICCB-28 | Idoxuridine | 5905 | 0.481 | ICCB-61 | Tipifarnib | 159324 | 0.495 |
| ICCB-29 | Imperatorin | 10212 | 0.377 | ICCB-62 | Toceranib | 5329106 | 0.456 |
| ICCB-30 | Isoliquiritigenin | 638278 | 0.577 | ICCB-63 | 402-71-1 | 439647 | 0.409 |
| ICCB-31 | Kasugamycin | 65174 | 0.620 | ICCB-64 | UK-383367 | 9818682 | 0.403 |
| ICCB-32 | LY-255283 | 122023 | 0.561 | ICCB-65 | Vidofludimus | 9820008 | 0.509 |
| ICCB-33 | Lincomycin | 64710 | 0.415 |
| Code | Descriptor | Coefficient (β) | R2 Contributions |
|---|---|---|---|
| Intercept | 0.6445 | ||
| X1 | I50_B_AB_nCi_2_M3_SS1_T_KA_h−s_MID | −1.5200 | 22.02% |
| X2 | AC[4]_K_F_AB_Ci(−1.25;1.25)_2_M10_MP0_T_LGP[2]_psa_MID | −0.0038 | 19.35% |
| X3 | IB_S_B_AB_nCi_2_M3_NS0_M_LGL[2–3]_a_p_MID | −0.0203 | 26.10% |
| X4 | AC[1]_S_B_AB_nCi_2_M3_NS0_T_LGP[2]_e_p_MID | −0.0363 | 9.32% |
| X5 | AC[3]_K_F_AB_Ci(0.25;−0.25)_2_M15_MP1_X_KA_c_MID | 0.0038 | 9.60% |
| X6 | MN_TrC_AB_nCi_3_M20(M16)_SS2_T_LG3P[1]_LGP[1]_h_MID | 6.0267 | 6.77% |
| X7 | IB_S_F_AB_Ci(0.25;−0.25)_2_M10_SS0_X_KA_c_MID | 0.0046 | 6.84% |
| Metric | OLS-Hold-Out | LOOCV |
|---|---|---|
| R (Correlation Coefficient) | 0.9673 | 0.9076 |
| R2 (Determination Coefficient) | 0.9034 | 0.8232 |
| R2ext | 0.9034 | NaN |
| Q2 (Predictive Squared Correlation) | NaN | 0.8232 |
| QMRF (Mean Squared Prediction Error) | 0.0014 | 0.0017 |
| RMSEP (Square Root of MSE) | 0.0378 | 0.0413 |
| MAEext | 0.0283 | 0.0337 |
| (R2 − R02)/R2 < 0.1 | 0.0354 | 0.0000 |
| (R2 − R0′2)/R2 < 0.1 | 0.0277 | 0.0313 |
| |R02 − R0′2| < 0.1 | 0.0070 | 0.0258 |
| 0.85 < K < 1.15 | 1.0466 | 0.9992 |
| 0.85 < k’ < 1.15 | 0.9517 | 0.9935 |
| Direct Inhibition | |||||||||
|---|---|---|---|---|---|---|---|---|---|
| ICCB_ID | Mean | BestEnergy | DesvSt | RMSD | ICCB_ID | Mean | BestEnergy | DesvSt | RMSD |
| ICCB-3 | −6.06 | −6.22 | 0.06 | 1.96 | ICCB-38 | −6.42 | −7.1 | 0.27 | 1.81 |
| ICCB-4 | −7.83 | −8.01 | 0.08 | 1.33 | ICCB-43 | −5.27 | −5.28 | 0.00 | 0.05 |
| ICCB-7 | −6.28 | −6.64 | 0.17 | 0.43 | ICCB-44 | −6.38 | −6.92 | 0.27 | 0 |
| ICCB-8 | −7.36 | −7.89 | 0.22 | 1.76 | ICCB-45 | −7.80 | −8.23 | 0.2 | 0.46 |
| ICCB-9 | −6.38 | −6.47 | 0.07 | 1.76 | ICCB-47 | −7.46 | −7.81 | 0.18 | 1.85 |
| ICCB-15 | −6.89 | −7.29 | 0.27 | 0.88 | ICCB-49 | −7.01 | −7.07 | −6.97 | 0.45 |
| ICCB-23 | −6.47 | −6.69 | 0.15 | 0.3 | ICCB-51 | −9.31 | −9.57 | 0.14 | 0.46 |
| ICCB-24 | −6.47 | −6.69 | 0.15 | 1.63 | ICCB-53 | −8.48 | −9.49 | 0.32 | 1 |
| ICCB-25 | −8.07 | −8.69 | 0.2 | 1.75 | ICCB-54 | −7.34 | −7.88 | 0.26 | 1.18 |
| ICCB-26 | −8.68 | −9.41 | 0.31 | 0 | ICCB-55 | −8.26 | −8.42 | 0.07 | 0.28 |
| ICCB-27 | −7.89 | −8.47 | 0.26 | 0.98 | ICCB-56 | −6.81 | −7.96 | 0.32 | 1.37 |
| ICCB-31 | −7.63 | −7.96 | 0.17 | 1.21 | ICCB-58 | −7.63 | −7.98 | 0.16 | 1.64 |
| ICCB-32 | −6.35 | −7.07 | 0.34 | 0.83 | ICCB-61 | −7.02 | −7.41 | 0.16 | 1.48 |
| ICCB-33 | −7.67 | −7.94 | 0.16 | 0.87 | ICCB-62 | −7.24 | −7.54 | 0.12 | 1.71 |
| ICCB-36 | −8.55 | −9.46 | 0.34 | 1.93 | ICCB-65 | −7.26 | −7.79 | 0.18 | 1.15 |
| ICCB-37 | −8.06 | −8.41 | 0.16 | −7.67 | |||||
| Allosteric Inhibition | |||||||||
| ICCB_ID | Mean | BestEnergy | DesvSt | RMSD | ICCB_ID | Mean | BestEnergy | DesvSt | RMSD |
| ICCB-3 | −7.47 | −7.49 | 0.01 | 0.13 | ICCB-38 | −7.98 | −8.23 | 0.14 | 0.88 |
| ICCB-4 | −10.2 | −10.26 | 0.04 | 0.4 | ICCB-43 | −7.06 | −7.12 | 0.04 | 0.23 |
| ICCB-7 | −7.3 | −7.39 | 0.02 | 0.84 | ICCB-44 | −8.17 | −8.48 | 0.14 | 1.01 |
| ICCB-8 | −8.95 | −9.25 | 0.14 | 1.8 | ICCB-45 | −10.39 | −10.74 | 0.17 | 1.26 |
| ICCB-9 | −7.35 | −7.41 | 0.06 | 0.15 | ICCB-47 | −8.15 | −8.28 | 0.08 | 0.31 |
| ICCB-15 | −7.74 | −8.21 | 0.16 | 0.86 | ICCB-49 | −7.26 | −7.36 | 0.05 | 0.49 |
| ICCB-23 | −7.1 | −7.34 | 0.06 | 0.9 | ICCB-51 | −10.26 | −10.62 | 0.16 | 0.66 |
| ICCB-24 | −10.59 | −11.27 | 0.23 | 1.04 | ICCB-53 | −11.34 | −11.62 | 0.18 | 1.08 |
| ICCB-25 | −11 | −11.36 | 0.14 | 0.98 | ICCB-54 | −8.83 | −9.12 | 0.12 | 0.63 |
| ICCB−26 | −11.58 | −12.15 | 0.22 | 1.12 | ICCB-55 | −10.25 | −10.29 | 0.02 | 0.48 |
| ICCB-27 | −7.88 | −8.96 | 0.7 | 1.14 | ICCB-56 | −8.86 | −8.73 | 0.13 | 1.38 |
| ICCB-31 | −8.2 | −8.91 | 0.26 | 0.76 | ICCB-58 | −9.85 | −10.07 | 0.11 | 0.60 |
| ICCB-32 | −7.68 | −8.84 | 0.48 | 1.58 | ICCB-61 | −9.22 | −9.64 | 0.06 | 1.70 |
| ICCB-33 | −8.59 | −8.36 | 0.16 | 1.16 | ICCB-62 | −9.64 | −10.04 | 0.15 | 1.60 |
| ICCB-36 | −10.38 | −10.61 | 0.13 | 1.64 | ICCB-65 | −8.86 | −9.18 | 0.16 | 1.75 |
| ICCB-37 | −9.73 | −10.24 | 0.25 | 1.8 | |||||
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Saurith-Coronell, O.; Sierra-Hernandez, O.; Rodríguez-Macías, J.D.; Mora, J.R.; Perez-Perez, N.; Alcázar, J.J.; Moura, R.O.d.; Nascimento, I.J.d.S.; Márquez Brazón, E.A.; Marrero-Ponce, Y. Computational Identification of Potential Novel Allosteric IHF Inhibitors Using QSAR Modeling to Inhibit Plasmid-Mediated Antibiotic Resistance. Int. J. Mol. Sci. 2026, 27, 2526. https://doi.org/10.3390/ijms27062526
Saurith-Coronell O, Sierra-Hernandez O, Rodríguez-Macías JD, Mora JR, Perez-Perez N, Alcázar JJ, Moura ROd, Nascimento IJdS, Márquez Brazón EA, Marrero-Ponce Y. Computational Identification of Potential Novel Allosteric IHF Inhibitors Using QSAR Modeling to Inhibit Plasmid-Mediated Antibiotic Resistance. International Journal of Molecular Sciences. 2026; 27(6):2526. https://doi.org/10.3390/ijms27062526
Chicago/Turabian StyleSaurith-Coronell, Oscar, Olimpo Sierra-Hernandez, Juan David Rodríguez-Macías, José R. Mora, Noel Perez-Perez, Jackson J. Alcázar, Ricardo Olimpio de Moura, Igor José dos Santos Nascimento, Edgar A. Márquez Brazón, and Yovani Marrero-Ponce. 2026. "Computational Identification of Potential Novel Allosteric IHF Inhibitors Using QSAR Modeling to Inhibit Plasmid-Mediated Antibiotic Resistance" International Journal of Molecular Sciences 27, no. 6: 2526. https://doi.org/10.3390/ijms27062526
APA StyleSaurith-Coronell, O., Sierra-Hernandez, O., Rodríguez-Macías, J. D., Mora, J. R., Perez-Perez, N., Alcázar, J. J., Moura, R. O. d., Nascimento, I. J. d. S., Márquez Brazón, E. A., & Marrero-Ponce, Y. (2026). Computational Identification of Potential Novel Allosteric IHF Inhibitors Using QSAR Modeling to Inhibit Plasmid-Mediated Antibiotic Resistance. International Journal of Molecular Sciences, 27(6), 2526. https://doi.org/10.3390/ijms27062526

