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  1. Article ; Online: Machine Learning Approaches to Investigate the Structure-Activity Relationship of Angiotensin-Converting Enzyme Inhibitors.

    Yu, Tianshi / Nantasenamat, Chanin / Anuwongcharoen, Nuttapat / Piacham, Theeraphon

    ACS omega

    2023  Volume 8, Issue 46, Page(s) 43500–43510

    Abstract: Angiotensin-converting enzyme inhibitors (ACEIs) play a crucial role in treating conditions such as hypertension, heart failure, and kidney diseases. Nevertheless, the ACEIs currently available on the market are linked to a variety of adverse effects ... ...

    Abstract Angiotensin-converting enzyme inhibitors (ACEIs) play a crucial role in treating conditions such as hypertension, heart failure, and kidney diseases. Nevertheless, the ACEIs currently available on the market are linked to a variety of adverse effects including renal insufficiency, which restricts their usage. There is thus an urgent need to optimize the currently available ACEIs. This study represents a structure-activity relationship investigation of ACEIs, employing machine learning to analyze data sets sourced from the ChEMBL database. Exploratory data analysis was performed to visualize the physicochemical properties of compounds by investigating the distributions, patterns, and statistical significance among the different bioactivity groups. Further scaffold analysis has identified 9 representative Murcko scaffolds with frequencies ≥10. Scaffold diversity has revealed that active ACEIs had more scaffold diversity than their intermediate and inactive counterparts, thereby indicating the significance of performing lead optimization on scaffolds of active ACEIs. Scaffolds 1, 3, 6, and 8 are unfavorable in comparison with scaffolds 2, 3, 5, 7, and 9. QSAR investigation of compiled data sets consisting of 549 compounds led to the selection of Mordred descriptor and Random Forest algorithm as the best model, which afforded robust model performance (accuracy: 0.981, 0.77, and 0.745; MCC: 0.972, 0.658, and 0.617 for the training set, 10-fold cross-validation set, and testing set, respectively). To enhance the model's robustness and predictability, we reduced the chemical diversity of the input compounds by using the 9 most prevalent Murcko scaffold-matched compounds (comprising a total of 168) followed by a subsequent QSAR model investigation using Mordred descriptor and extremely gradient boost algorithm (accuracy: 0.973, 0.849, and 0.823; MCC: 0.959, 0.786, and 0.742 for the training set, 10-fold cross-validation set, and testing set, respectively). Further illustration of the structure-activity relationship using SALI plots has enabled the identification of clusters of compounds that create activity cliffs. These findings, as presented in this study, contribute to the advancement of drug discovery and the optimization of ACEIs.
    Language English
    Publishing date 2023-11-08
    Publishing country United States
    Document type Journal Article
    ISSN 2470-1343
    ISSN (online) 2470-1343
    DOI 10.1021/acsomega.3c03225
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  2. Article ; Online: Cheminformatic Analysis and Machine Learning Modeling to Investigate Androgen Receptor Antagonists to Combat Prostate Cancer.

    Yu, Tianshi / Nantasenamat, Chanin / Kachenton, Supicha / Anuwongcharoen, Nuttapat / Piacham, Theeraphon

    ACS omega

    2023  Volume 8, Issue 7, Page(s) 6729–6742

    Abstract: Prostate cancer (PCa) is a major leading cause of mortality of cancer among males. There have been numerous studies to develop antagonists against androgen receptor (AR), a crucial therapeutic target for PCa. This study is a systematic cheminformatic ... ...

    Abstract Prostate cancer (PCa) is a major leading cause of mortality of cancer among males. There have been numerous studies to develop antagonists against androgen receptor (AR), a crucial therapeutic target for PCa. This study is a systematic cheminformatic analysis and machine learning modeling to study the chemical space, scaffolds, structure-activity relationship, and landscape of human AR antagonists. There are 1678 molecules as final data sets. Chemical space visualization by physicochemical property visualization has demonstrated that molecules from the potent/active class generally have a mildly smaller molecular weight (MW), octanol-water partition coefficient (log
    Language English
    Publishing date 2023-02-13
    Publishing country United States
    Document type Journal Article
    ISSN 2470-1343
    ISSN (online) 2470-1343
    DOI 10.1021/acsomega.2c07346
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  3. Article: Large-scale comparative review and assessment of computational methods for phage virion proteins identification.

    Kabir, Muhammad / Nantasenamat, Chanin / Kanthawong, Sakawrat / Charoenkwan, Phasit / Shoombuatong, Watshara

    EXCLI journal

    2022  Volume 21, Page(s) 11–29

    Abstract: Phage virion proteins (PVPs) are effective at recognizing and binding to host cell receptors while having no deleterious effects on human or animal cells. Understanding their functional mechanisms is regarded as a critical goal that will aid in rational ... ...

    Abstract Phage virion proteins (PVPs) are effective at recognizing and binding to host cell receptors while having no deleterious effects on human or animal cells. Understanding their functional mechanisms is regarded as a critical goal that will aid in rational antibacterial drug discovery and development. Although high-throughput experimental methods for identifying PVPs are considered the gold standard for exploring crucial PVP features, these procedures are frequently time-consuming and labor-intensive. Thusfar, more than ten sequence-based predictors have been established for the
    Language English
    Publishing date 2022-01-03
    Publishing country Germany
    Document type Journal Article ; Review
    ISSN 1611-2156
    ISSN 1611-2156
    DOI 10.17179/excli2021-4411
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  4. Article: ERpred: a web server for the prediction of subtype-specific estrogen receptor antagonists.

    Schaduangrat, Nalini / Malik, Aijaz Ahmad / Nantasenamat, Chanin

    PeerJ

    2021  Volume 9, Page(s) e11716

    Abstract: Estrogen receptors alpha and beta (ERα and ERβ) are responsible for breast cancer metastasis through their involvement of clinical outcomes. Estradiol and hormone replacement therapy targets both ERs, but this often leads to an increased risk of breast ... ...

    Abstract Estrogen receptors alpha and beta (ERα and ERβ) are responsible for breast cancer metastasis through their involvement of clinical outcomes. Estradiol and hormone replacement therapy targets both ERs, but this often leads to an increased risk of breast and endometrial cancers as well as thromboembolism. A major challenge is posed for the development of compounds possessing ER subtype specificity. Herein, we present a large-scale classification structure-activity relationship (CSAR) study of inhibitors from the ChEMBL database which consisted of an initial set of 11,618 compounds for ERα and 7,810 compounds for ERβ. The IC
    Language English
    Publishing date 2021-07-09
    Publishing country United States
    Document type Journal Article
    ZDB-ID 2703241-3
    ISSN 2167-8359
    ISSN 2167-8359
    DOI 10.7717/peerj.11716
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  5. Article: Machine learning approaches to study the structure-activity relationships of LpxC inhibitors.

    Yu, Tianshi / Chong, Li Chuin / Nantasenamat, Chanin / Anuwongcharoen, Nuttapat / Piacham, Theeraphon

    EXCLI journal

    2023  Volume 22, Page(s) 975–991

    Abstract: Antimicrobial resistance (AMR) has emerged as one of the global threats to human health in the 21st century. Drug discovery of inhibitors against novel targets rather than conventional bacterial targets has been considered an inevitable strategy for the ... ...

    Abstract Antimicrobial resistance (AMR) has emerged as one of the global threats to human health in the 21st century. Drug discovery of inhibitors against novel targets rather than conventional bacterial targets has been considered an inevitable strategy for the growing threat of AMR infections. In this study, we applied quantitative structure-activity relationship (QSAR) modeling to the LpxC inhibitors to predict the inhibitory activity. In addition, we performed various cheminformatics analysis consisting of the exploration of the chemical space, identification of chemotypes, performing structure-activity landscape and activity cliffs as well as construction of the Structure-Activity Similarity (SAS) map. We built a total of 24 QSAR classification models using PubChem and MACCS fingerprint with 12 various machine learning algorithms. The best model with PubChem fingerprint is the Extremely Gradient Boost model (accuracy on the training set: 0.937; accuracy on the 10-fold cross-validation set: 0.795; accuracy on the test set: 0.799). Furthermore, it was found that the best model using the MACCS fingerprint was the Random Forest model (accuracy on the training set: 0.955; accuracy on the 10-fold cross-validation set: 0.803; accuracy on the test set: 0.785). In addition, we have identified eight consensus activity cliff generators that are highly informative for further SAR investigations. It is hoped that findings presented herein can provide guidance for further lead optimization of LpxC inhibitors.
    Language English
    Publishing date 2023-09-05
    Publishing country Germany
    Document type Journal Article
    ISSN 1611-2156
    ISSN 1611-2156
    DOI 10.17179/excli2023-6356
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  6. Article: PARP1pred: a web server for screening the bioactivity of inhibitors against DNA repair enzyme PARP-1.

    Lerksuthirat, Tassanee / Chitphuk, Sermsiri / Stitchantrakul, Wasana / Dejsuphong, Donniphat / Malik, Aijaz Ahmad / Nantasenamat, Chanin

    EXCLI journal

    2023  Volume 22, Page(s) 84–107

    Abstract: Cancer is the leading cause of death worldwide, resulting in the mortality of more than 10 million people in 2020, according to Global Cancer Statistics 2020. A potential cancer therapy involves targeting the DNA repair process by inhibiting PARP-1. In ... ...

    Abstract Cancer is the leading cause of death worldwide, resulting in the mortality of more than 10 million people in 2020, according to Global Cancer Statistics 2020. A potential cancer therapy involves targeting the DNA repair process by inhibiting PARP-1. In this study, classification models were constructed using a non-redundant set of 2018 PARP-1 inhibitors. Briefly, compounds were described by 12 fingerprint types and built using the random forest algorithm concomitant with various sampling approaches. Results indicated that PubChem with an oversampling approach yielded the best performance, with a Matthews correlation coefficient > 0.7 while also affording interpretable molecular features. Moreover, feature importance, as determined from the Gini index, revealed that the aromatic/cyclic/heterocyclic moiety, nitrogen-containing fingerprints, and the ether/aldehyde/alcohol moiety were important for PARP-1 inhibition. Finally, our predictive model was deployed as a web application called PARP1pred and is publicly available at https://parp1pred.streamlitapp.com, allowing users to predict the biological activity of query compounds using their SMILES notation as the input. It is anticipated that the model described herein will aid in the discovery of effective PARP-1 inhibitors.
    Language English
    Publishing date 2023-01-05
    Publishing country Germany
    Document type Journal Article
    ISSN 1611-2156
    ISSN 1611-2156
    DOI 10.17179/excli2022-5602
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  7. Article ; Online: Toward insights on antimicrobial selectivity of host defense peptides via machine learning model interpretation.

    Li, Hao / Tamang, Thinam / Nantasenamat, Chanin

    Genomics

    2021  Volume 113, Issue 6, Page(s) 3851–3863

    Abstract: Host defense peptides are promising candidates for the development of novel antibiotics. To realize their therapeutic potential, high levels of target selectivity is essential. This study aims to identify factors governing selectivity via the use of the ... ...

    Abstract Host defense peptides are promising candidates for the development of novel antibiotics. To realize their therapeutic potential, high levels of target selectivity is essential. This study aims to identify factors governing selectivity via the use of the random forest algorithm for correlating peptide sequence information with their bioactivity data. Satisfactory predictive models were achieved from out-of-bag prediction that yielded accuracies and Matthew's correlation coefficients in excess of 0.80 and 0.57, respectively. Model interpretation through the use of variable importance metrics and partial dependence plots indicated that the selectivity was heavily influenced by the composition and distribution patterns of molecular charge and solubility related parameters. Furthermore, the three investigated bacterial target species (Escherichia coli, Pseudomonas aeruginosa and Staphylococcus aureus) likely had a significant influence on how selectivity was realized as there appears to be a similar underlying selectivity mechanism on the basis of charge-solubility properties (i.e. but which is tailored according to the target in question).
    MeSH term(s) Anti-Bacterial Agents/chemistry ; Anti-Infective Agents ; Antimicrobial Cationic Peptides/pharmacology ; Machine Learning ; Staphylococcus aureus
    Chemical Substances Anti-Bacterial Agents ; Anti-Infective Agents ; Antimicrobial Cationic Peptides
    Language English
    Publishing date 2021-09-01
    Publishing country United States
    Document type Journal Article ; Research Support, Non-U.S. Gov't
    ZDB-ID 356334-0
    ISSN 1089-8646 ; 0888-7543
    ISSN (online) 1089-8646
    ISSN 0888-7543
    DOI 10.1016/j.ygeno.2021.08.023
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  8. Article: Toward insights on determining factors for high activity in antimicrobial peptides via machine learning.

    Li, Hao / Nantasenamat, Chanin

    PeerJ

    2019  Volume 7, Page(s) e8265

    Abstract: The continued and general rise of antibiotic resistance in pathogenic microbes is a well-recognized global threat. Host defense peptides (HDPs), a component of the innate immune system have demonstrated promising potential to become a next generation ... ...

    Abstract The continued and general rise of antibiotic resistance in pathogenic microbes is a well-recognized global threat. Host defense peptides (HDPs), a component of the innate immune system have demonstrated promising potential to become a next generation antibiotic effective against a plethora of pathogens. While the effectiveness of antimicrobial HDPs has been extensively demonstrated in experimental studies, theoretical insights on the mechanism by which these peptides function is comparably limited. In particular, experimental studies of AMP mechanisms are limited in the number of different peptides investigated and the type of peptide parameters considered. This study makes use of the random forest algorithm for classifying the antimicrobial activity as well for identifying molecular descriptors underpinning the antimicrobial activity of investigated peptides. Subsequent manual interpretation of the identified important descriptors revealed that polarity-solubility are necessary for the membrane lytic antimicrobial activity of HDPs.
    Language English
    Publishing date 2019-12-20
    Publishing country United States
    Document type Journal Article
    ZDB-ID 2703241-3
    ISSN 2167-8359
    ISSN 2167-8359
    DOI 10.7717/peerj.8265
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  9. Article ; Online: Development and performance of CUHAS-ROBUST application for pulmonary rifampicin-resistance tuberculosis screening in Indonesia.

    Herman, Bumi / Sirichokchatchawan, Wandee / Pongpanich, Sathirakorn / Nantasenamat, Chanin

    PloS one

    2021  Volume 16, Issue 3, Page(s) e0249243

    Abstract: Background and objectives: Diagnosis of Pulmonary Rifampicin Resistant Tuberculosis (RR-TB) with the Drug-Susceptibility Test (DST) is costly and time-consuming. Furthermore, GeneXpert for rapid diagnosis is not widely available in Indonesia. This study ...

    Abstract Background and objectives: Diagnosis of Pulmonary Rifampicin Resistant Tuberculosis (RR-TB) with the Drug-Susceptibility Test (DST) is costly and time-consuming. Furthermore, GeneXpert for rapid diagnosis is not widely available in Indonesia. This study aims to develop and evaluate the CUHAS-ROBUST model performance, an artificial-intelligence-based RR-TB screening tool.
    Methods: A cross-sectional study involved suspected all type of RR-TB patients with complete sputum Lowenstein Jensen DST (reference) and 19 clinical, laboratory, and radiology parameter results, retrieved from medical records in hospitals under the Faculty of Medicine, Hasanuddin University Indonesia, from January 2015-December 2019. The Artificial Neural Network (ANN) models were built along with other classifiers. The model was tested on participants recruited from January 2020-October 2020 and deployed into CUHAS-ROBUST (index test) application. Sensitivity, specificity, and accuracy were obtained for assessment.
    Results: A total of 487 participants (32 Multidrug-Resistant/MDR 57 RR-TB, 398 drug-sensitive) were recruited for model building and 157 participants (23 MDR and 21 RR) in prospective testing. The ANN full model yields the highest values of accuracy (88% (95% CI 85-91)), and sensitivity (84% (95% CI 76-89)) compare to other models that show sensitivity below 80% (Logistic Regression 32%, Decision Tree 44%, Random Forest 25%, Extreme Gradient Boost 25%). However, this ANN has lower specificity among other models (90% (95% CI 86-93)) where Logistic Regression demonstrates the highest (99% (95% CI 97-99)). This ANN model was selected for the CUHAS-ROBUST application, although still lower than the sensitivity of global GeneXpert results (87.5%).
    Conclusion: The ANN-CUHAS ROBUST outperforms other AI classifiers model in detecting all type of RR-TB, and by deploying into the application, the health staff can utilize the tool for screening purposes particularly at the primary care level where the GeneXpert examination is not available.
    Trial registration: NCT04208789.
    MeSH term(s) Adult ; Antibiotics, Antitubercular/therapeutic use ; Area Under Curve ; Cross-Sectional Studies ; Drug Resistance, Bacterial ; Female ; Humans ; Indonesia ; Logistic Models ; Male ; Middle Aged ; Mycobacterium tuberculosis ; Neural Networks, Computer ; ROC Curve ; Rifampin/therapeutic use ; Sensitivity and Specificity ; Tuberculosis/diagnosis ; Tuberculosis/drug therapy
    Chemical Substances Antibiotics, Antitubercular ; Rifampin (VJT6J7R4TR)
    Language English
    Publishing date 2021-03-25
    Publishing country United States
    Document type Journal Article ; Research Support, Non-U.S. Gov't
    ISSN 1932-6203
    ISSN (online) 1932-6203
    DOI 10.1371/journal.pone.0249243
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  10. Article ; Online: PARP1pred

    Tassanee Lerksuthirat / Sermsiri Chitphuk / Wasana Stitchantrakul / Donniphat Dejsuphong / Aijaz Ahmad Malik / Chanin Nantasenamat

    EXCLI Journal : Experimental and Clinical Sciences, Vol 22, Pp 84-

    a web server for screening the bioactivity of inhibitors against DNA repair enzyme PARP-1

    2023  Volume 107

    Abstract: Cancer is the leading cause of death worldwide, resulting in the mortality of more than 10 million people in 2020, according to Global Cancer Statistics 2020. A potential cancer therapy involves targeting the DNA repair process by inhibiting PARP-1. In ... ...

    Abstract Cancer is the leading cause of death worldwide, resulting in the mortality of more than 10 million people in 2020, according to Global Cancer Statistics 2020. A potential cancer therapy involves targeting the DNA repair process by inhibiting PARP-1. In this study, classification models were constructed using a non-redundant set of 2018 PARP-1 inhibitors. Briefly, compounds were described by 12 fingerprint types and built using the random forest algorithm concomitant with various sampling approaches. Results indicated that PubChem with an oversampling approach yielded the best performance, with a Matthews correlation coefficient > 0.7 while also affording interpretable molecular features. Moreover, feature importance, as determined from the Gini index, revealed that the aromatic/cyclic/heterocyclic moiety, nitrogen-containing fingerprints, and the ether/aldehyde/alcohol moiety were important for PARP-1 inhibition. Finally, our predictive model was deployed as a web application called PARP1pred and is publicly available at https://parp1pred.streamlitapp.com, allowing users to predict the biological activity of query compounds using their SMILES notation as the input. It is anticipated that the model described herein will aid in the discovery of effective PARP-1 inhibitors.
    Keywords parp-1 ; dna repair ; machine learning ; qsar ; webserver ; cheminformatics ; Neoplasms. Tumors. Oncology. Including cancer and carcinogens ; RC254-282 ; Biology (General) ; QH301-705.5
    Subject code 540
    Language English
    Publishing date 2023-01-01T00:00:00Z
    Publisher IfADo - Leibniz Research Centre for Working Environment and Human Factors, Dortmund
    Document type Article ; Online
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

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