134 results on '"Schaduangrat, Nalini"'
Search Results
2. Leveraging a meta-learning approach to advance the accuracy of Nav blocking peptides prediction
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Shoombuatong, Watshara, Homdee, Nutta, Schaduangrat, Nalini, and Chumnanpuen, Pramote
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- 2024
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3. Stack-HDAC3i: A high-precision identification of HDAC3 inhibitors by exploiting a stacked ensemble-learning framework
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Shoombuatong, Watshara, Meewan, Ittipat, Mookdarsanit, Lawankorn, and Schaduangrat, Nalini
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- 2024
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4. M3S-ALG: Improved and robust prediction of allergenicity of chemical compounds by using a novel multi-step stacking strategy
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Charoenkwan, Phasit, Schaduangrat, Nalini, Phan, Le Thi, Manavalan, Balachandran, and Shoombuatong, Watshara
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- 2025
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5. StackER: a novel SMILES-based stacked approach for the accelerated and efficient discovery of ERα and ERβ antagonists
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Schaduangrat, Nalini, Homdee, Nutta, and Shoombuatong, Watshara
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- 2023
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6. TIPred: a novel stacked ensemble approach for the accelerated discovery of tyrosinase inhibitory peptides
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Charoenkwan, Phasit, Kongsompong, Sasikarn, Schaduangrat, Nalini, Chumnanpuen, Pramote, and Shoombuatong, Watshara
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- 2023
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7. StackTTCA: a stacking ensemble learning-based framework for accurate and high-throughput identification of tumor T cell antigens
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Charoenkwan, Phasit, Schaduangrat, Nalini, and Shoombuatong, Watshara
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- 2023
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8. DeepAR: a novel deep learning-based hybrid framework for the interpretable prediction of androgen receptor antagonists
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Schaduangrat, Nalini, Anuwongcharoen, Nuttapat, Charoenkwan, Phasit, and Shoombuatong, Watshara
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- 2023
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9. PSRQSP: An effective approach for the interpretable prediction of quorum sensing peptide using propensity score representation learning
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Charoenkwan, Phasit, Chumnanpuen, Pramote, Schaduangrat, Nalini, Oh, Changmin, Manavalan, Balachandran, and Shoombuatong, Watshara
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- 2023
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10. Improved prediction and characterization of blood-brain barrier penetrating peptides using estimated propensity scores of dipeptides
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Charoenkwan, Phasit, Chumnanpuen, Pramote, Schaduangrat, Nalini, Lio’, Pietro, Moni, Mohammad Ali, and Shoombuatong, Watshara
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- 2022
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11. Computational prediction and interpretation of druggable proteins using a stacked ensemble-learning framework
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Charoenkwan, Phasit, Schaduangrat, Nalini, Lio’, Pietro, Moni, Mohammad Ali, Shoombuatong, Watshara, and Manavalan, Balachandran
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- 2022
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12. NEPTUNE: A novel computational approach for accurate and large-scale identification of tumor homing peptides
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Charoenkwan, Phasit, Schaduangrat, Nalini, Lio', Pietro, Moni, Mohammad Ali, Manavalan, Balachandran, and Shoombuatong, Watshara
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- 2022
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13. SAPPHIRE: A stacking-based ensemble learning framework for accurate prediction of thermophilic proteins
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Charoenkwan, Phasit, Schaduangrat, Nalini, Moni, Mohammad Ali, Lio’, Pietro, Manavalan, Balachandran, and Shoombuatong, Watshara
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- 2022
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14. StackPR is a new computational approach for large-scale identification of progesterone receptor antagonists using the stacking strategy
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Schaduangrat, Nalini, Anuwongcharoen, Nuttapat, Moni, Mohammad Ali, Lio’, Pietro, Charoenkwan, Phasit, and Shoombuatong, Watshara
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- 2022
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15. ABCpred: a webserver for the discovery of acetyl- and butyryl-cholinesterase inhibitors
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Malik, Aijaz Ahmad, Ojha, Suvash Chandra, Schaduangrat, Nalini, and Nantasenamat, Chanin
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- 2022
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16. THPep: A machine learning-based approach for predicting tumor homing peptides
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Shoombuatong, Watshara, Schaduangrat, Nalini, Pratiwi, Reny, and Nantasenamat, Chanin
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- 2019
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17. Towards reproducible computational drug discovery
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Schaduangrat, Nalini, Lampa, Samuel, Simeon, Saw, Gleeson, Matthew Paul, Spjuth, Ola, and Nantasenamat, Chanin
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- 2020
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18. Leveraging a meta-learning approach to advance the accuracy of Nav blocking peptides prediction.
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Shoombuatong, Watshara, Homdee, Nutta, Schaduangrat, Nalini, and Chumnanpuen, Pramote
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MACHINE learning ,ACTION potentials ,FEATURE selection ,PEPTIDES ,ITCHING ,PROTEIN-protein interactions ,PYRETHROIDS - Abstract
The voltage-gated sodium (Na
v ) channel is a crucial molecular component responsible for initiating and propagating action potentials. While the α subunit, forming the channel pore, plays a central role in this function, the complete physiological function of Nav channels relies on crucial interactions between the α subunit and auxiliary proteins, known as protein–protein interactions (PPI). Nav blocking peptides (NaBPs) have been recognized as a promising and alternative therapeutic agent for pain and itch. Although traditional experimental methods can precisely determine the effect and activity of NaBPs, they remain time-consuming and costly. Hence, machine learning (ML)-based methods that are capable of accurately contributing in silico prediction of NaBPs are highly desirable. In this study, we develop an innovative meta-learning-based NaBP prediction method (MetaNaBP). MetaNaBP generates new feature representations by employing a wide range of sequence-based feature descriptors that cover multiple perspectives, in combination with powerful ML algorithms. Then, these feature representations were optimized to identify informative features using a two-step feature selection method. Finally, the selected informative features were applied to develop the final meta-predictor. To the best of our knowledge, MetaNaBP is the first meta-predictor for NaBP prediction. Experimental results demonstrated that MetaNaBP achieved an accuracy of 0.948 and a Matthews correlation coefficient of 0.898 over the independent test dataset, which were 5.79% and 11.76% higher than the existing method. In addition, the discriminative power of our feature representations surpassed that of conventional feature descriptors over both the training and independent test datasets. We anticipate that MetaNaBP will be exploited for the large-scale prediction and analysis of NaBPs to narrow down the potential NaBPs. [ABSTRACT FROM AUTHOR]- Published
- 2024
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19. The role of ncRNA regulatory mechanisms in diseases—case on gestational diabetes.
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Gao, Dong, Ren, Liping, Hao, Yu-Duo, Schaduangrat, Nalini, Liu, Xiao-Wei, Yuan, Shi-Shi, Yang, Yu-He, Wang, Yan, Shoombuatong, Watshara, and Ding, Hui
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NON-coding RNA ,GENETIC regulation ,PREGNANCY complications ,GESTATIONAL diabetes ,CARBOHYDRATE intolerance ,HUMAN genome - Abstract
Non-coding RNAs (ncRNAs) are a class of RNA molecules that do not have the potential to encode proteins. Meanwhile, they can occupy a significant portion of the human genome and participate in gene expression regulation through various mechanisms. Gestational diabetes mellitus (GDM) is a pathologic condition of carbohydrate intolerance that begins or is first detected during pregnancy, making it one of the most common pregnancy complications. Although the exact pathogenesis of GDM remains unclear, several recent studies have shown that ncRNAs play a crucial regulatory role in GDM. Herein, we present a comprehensive review on the multiple mechanisms of ncRNAs in GDM along with their potential role as biomarkers. In addition, we investigate the contribution of deep learning-based models in discovering disease-specific ncRNA biomarkers and elucidate the underlying mechanisms of ncRNA. This might assist community-wide efforts to obtain insights into the regulatory mechanisms of ncRNAs in disease and guide a novel approach for early diagnosis and treatment of disease. [ABSTRACT FROM AUTHOR]
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- 2024
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20. TROLLOPE: A novel sequence-based stacked approach for the accelerated discovery of linear T-cell epitopes of hepatitis C virus.
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Charoenkwan, Phasit, Waramit, Sajee, Chumnanpuen, Pramote, Schaduangrat, Nalini, and Shoombuatong, Watshara
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HEPATITIS C virus ,MACHINE learning ,EPITOPES ,FEATURE selection ,VACCINE effectiveness ,INTERNET servers ,T cells - Abstract
Hepatitis C virus (HCV) infection is a concerning health issue that causes chronic liver diseases. Despite many successful therapeutic outcomes, no effective HCV vaccines are currently available. Focusing on T cell activity, the primary effector for HCV clearance, T cell epitopes of HCV (TCE-HCV) are considered promising elements to accelerate HCV vaccine efficacy. Thus, accurate and rapid identification of TCE-HCVs is recommended to obtain more efficient therapy for chronic HCV infection. In this study, a novel sequence-based stacked approach, termed TROLLOPE, is proposed to accurately identify TCE-HCVs from sequence information. Specifically, we employed 12 different sequence-based feature descriptors from heterogeneous perspectives, such as physicochemical properties, composition-transition-distribution information and composition information. These descriptors were used in cooperation with 12 popular machine learning (ML) algorithms to create 144 base-classifiers. To maximize the utility of these base-classifiers, we used a feature selection strategy to determine a collection of potential base-classifiers and integrated them to develop the meta-classifier. Comprehensive experiments based on both cross-validation and independent tests demonstrated the superior predictive performance of TROLLOPE compared with conventional ML classifiers, with cross-validation and independent test accuracies of 0.745 and 0.747, respectively. Finally, a user-friendly online web server of TROLLOPE (http://pmlabqsar.pythonanywhere.com/TROLLOPE) has been developed to serve research efforts in the large-scale identification of potential TCE-HCVs for follow-up experimental verification. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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21. EMPIRICAL COMPARISON AND ANALYSIS OF MACHINE LEARNING-BASED APPROACHES FOR DRUGGABLE PROTEIN IDENTIFICATION.
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Shoombuatong, Watshara, Schaduangrat, Nalini, and Nikomb, Jaru
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PROTEOMICS , *MACHINE learning , *FEATURE extraction , *DRUG target , *SCIENTIFIC community - Abstract
Efficiently and precisely identifying drug targets is crucial for developing and discovering potential medications. While conventional experimental approaches can accurately pinpoint these targets, they suffer from time constraints and are not easily adaptable to high-throughput processes. On the other hand, computational approaches, particularly those utilizing machine learning (ML), offer an efficient means to accelerate the prediction of druggable proteins based solely on their primary sequences. Recently, several state-of-the-art computational methods have been developed for predicting and analyzing druggable proteins. These computational methods showed high diversity in terms of benchmark datasets, feature extraction schemes, ML algorithms, evaluation strategies and webserver/software usability. Thus, our objective is to reexamine these computational approaches and conduct a comprehensive assessment of their strengths and weaknesses across multiple aspects. In this study, we deliver the first comprehensive survey regarding the state-of-the-art computational approaches for in silico prediction of druggable proteins. First, we provided information regarding the existing benchmark datasets and the types of ML methods employed. Second, we investigated the effectiveness of these computational methods in druggable protein identification for each benchmark dataset. Third, we summarized the important features used in this field and the existing webserver/software. Finally, we addressed the present constraints of the existing methods and offer valuable guidance to the scientific community in designing and developing novel prediction models. We anticipate that this comprehensive review will provide crucial information for the development of more accurate and efficient druggable protein predictors. [ABSTRACT FROM AUTHOR]
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- 2023
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22. iAMAP-SCM: A Novel Computational Tool for Large-Scale Identification of Antimalarial Peptides Using Estimated Propensity Scores of Dipeptides.
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Charoenkwan, Phasit, Schaduangrat, Nalini, Lio, Pietro, Moni, Mohammad Ali, Chumnanpuen, Pramote, and Shoombuatong, Watshara
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- 2022
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23. SCMRSA: a New Approach for Identifying and Analyzing Anti-MRSA Peptides Using Estimated Propensity Scores of Dipeptides.
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Charoenkwan, Phasit, Kanthawong, Sakawrat, Schaduangrat, Nalini, Li', Pietro, Moni, Mohammad Ali, and Shoombuatong, Watshara
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- 2022
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24. RECENT DEVELOPMENT OF MACHINE LEARNING-BASED METHODS FOR THE PREDICTION OF DEFENSIN FAMILY AND SUBFAMILY.
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Charoenkwan, Phasit, Schaduangrat, Nalini, Mahmud, S. M. Hasan, Thinnukool, Orawit, and Shoombuatong, Watshara
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INTERNET servers , *ANTIMICROBIAL peptides , *DEFENSINS , *FEATURE selection , *AMINO acid sequence , *MACHINE learning , *NATURAL immunity - Abstract
Nearly all living species comprise of host defense peptides called defensins, that are crucial for innate immunity. These peptides work by activating the immune system which kills the microbes directly or indirectly, thus providing protection to the host. Thus far, numerous preclinical and clinical trials for peptide-based drugs are currently being evaluated. Although, experimental methods can help to precisely identify the defensin peptide family and subfamily, these approaches are often time-consuming and cost-ineffective. On the other hand, machine learning (ML) methods are able to effectively employ protein sequence information without the knowledge of a protein's three-dimensional structure, thus highlighting their predictive ability for the large-scale identification. To date, several ML methods have been developed for the in silico identification of the defensin peptide family and subfamily. Therefore, summarizing the advantages and disadvantages of the existing methods is urgently needed in order to provide useful suggestions for the development and improvement of new computational models for the identification of the defensin peptide family and subfamily. With this goal in mind, we first provide a comprehensive survey on a collection of six state-of-the-art computational approaches for predicting the defensin peptide family and subfamily. Herein, we cover different important aspects, including the dataset quality, feature encoding methods, feature selection schemes, ML algorithms, cross-validation methods and web server availability/usability. Moreover, we provide our thoughts on the limitations of existing methods and future perspectives for improving the prediction performance and model interpretability. The insights and suggestions gained from this review are anticipated to serve as a valuable guidance for researchers for the development of more robust and useful predictors. [ABSTRACT FROM AUTHOR]
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- 2022
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25. EMPIRICAL COMPARISON AND ANALYSIS OF MACHINE LEARNING-BASED PREDICTORS FOR PREDICTING AND ANALYZING OF THERMOPHILIC PROTEINS.
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Charoenkwan, Phasit, Schaduangrat, Nalini, Hasan, Md Mehedi, Moni, Mohammad Ali, Lió, Pietro, and Shoombuatong, Watshara
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FEATURE selection , *MACHINE learning , *AMINO acid sequence , *PROTEINS , *INTERNET servers , *PROTEIN models , *FOOD research - Abstract
Thermophilic proteins (TPPs) are critical for basic research and in the food industry due to their ability to maintain a thermodynamically stable fold at extremely high temperatures. Thus, the expeditious identification of novel TPPs through computational models from protein sequences is very desirable. Over the last few decades, a number of computational methods, especially machine learning (ML)-based methods, for in silico prediction of TPPs have been developed. Therefore, it is desirable to revisit these methods and summarize their advantages and disadvantages in order to further develop new computational approaches to achieve more accurate and improved prediction of TPPs. With this goal in mind, we comprehensively investigate a large collection of fourteen state-of-the-art TPP predictors in terms of their dataset size, feature encoding schemes, feature selection strategies, ML algorithms, evaluation strategies and web server/software usability. To the best of our knowledge, this article represents the first comprehensive review on the development of ML-based methods for in silico prediction of TPPs. Among these TPP predictors, they can be classified into two groups according to the interpretability of ML algorithms employed (i.e., computational black-box methods and computational white-box methods). In order to perform the comparative analysis, we conducted a comparative study on several currently available TPP predictors based on two benchmark datasets. Finally, we provide future perspectives for the design and development of new computational models for TPP prediction. We hope that this comprehensive review will facilitate researchers in selecting an appropriate TPP predictor that is the most suitable one to deal with their purposes and provide useful perspectives for the development of more effective and accurate TPP predictors. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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26. ERpred: a web server for the prediction of subtype-specific estrogen receptor antagonists.
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Schaduangrat, Nalini, Malik, Aijaz Ahmad, and Nantasenamat, Chanin
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ESTROGEN receptors ,INTERNET servers ,ESTROGEN antagonists ,METASTATIC breast cancer ,BREAST cancer ,TREATMENT effectiveness - 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
50 was selected as the bioactivity unit for further investigation and after the data curation process, this led to a final data set of 1,593 and 1,281 compounds for ERα and ERβ, respectively. We employed the random forest (RF) algorithm for model building and of the 12 fingerprint types, models built using the PubChem fingerprint was the most robust (Ac of 94.65% and 92.25% and Matthews correlation coefficient (MCC) of 89% and 76% for ERα and ERβ, respectively) and therefore selected for feature interpretation. Results indicated the importance of features pertaining to aromatic rings, nitrogen-containing functional groups and aliphatic hydrocarbons. Finally, the model was deployed as the publicly available web server called ERpred at http://codes.bio/erpred where users can submit SMILES notation as the input query for prediction of the bioactivity against ERα and ERβ. [ABSTRACT FROM AUTHOR]- Published
- 2021
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27. HCVpred: A web server for predicting the bioactivity of hepatitis C virus NS5B inhibitors.
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Malik, Aijaz Ahmad, Phanus‐umporn, Chuleeporn, Schaduangrat, Nalini, Shoombuatong, Watshara, Isarankura‐Na‐Ayudhya, Chartchalerm, and Nantasenamat, Chanin
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HEPATITIS C virus ,INTERNET servers ,VIRUS inhibitors ,RANDOM forest algorithms ,CIRRHOSIS of the liver ,STRUCTURE-activity relationships - Abstract
Hepatitis C virus (HCV) is one of the major causes of liver disease affecting an estimated 170 million people culminating in 300,000 deaths from cirrhosis or liver cancer. NS5B is one of three potential therapeutic targets against HCV (i.e., the other two being NS3/4A and NS5A) that is central to viral replication. In this study, we developed a classification structure–activity relationship (CSAR) model for identifying substructures giving rise to anti‐HCV activities among a set of 578 non‐redundant compounds. NS5B inhibitors were described by a set of 12 fingerprint descriptors and predictive models were constructed from 100 independent data splits using the random forest algorithm. The modelability (MODI index) of the data set was determined to be robust with a value of 0.88 exceeding established threshold of 0.65. The predictive performance was deduced by the accuracy, sensitivity, specificity, and Matthews correlation coefficient, which was found to be statistically robust (i.e., the former three parameters afforded values in excess of 0.8 while the latter statistical parameter provided a value >0.7). An in‐depth analysis of the top 20 important descriptors revealed that aromatic ring and alkyl side chains are important for NS5B inhibition. Finally, the predictive model is deployed as a publicly accessible HCVpred web server (available at http://codes.bio/hcvpred/) that would allow users to predict the biological activity as being active or inactive against HCV NS5B. Thus, the knowledge and web server presented herein can be used in the design of more potent and specific drugs against the HCV NS5B. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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28. HLPpred-Fuse: improved and robust prediction of hemolytic peptide and its activity by fusing multiple feature representation.
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Hasan, Md Mehedi, Schaduangrat, Nalini, Basith, Shaherin, Lee, Gwang, Shoombuatong, Watshara, and Manavalan, Balachandran
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FORECASTING , *INTERNET servers , *TREE development , *ESSENTIAL drugs , *DRUG development , *PREDICTION models - Abstract
Motivation Therapeutic peptides failing at clinical trials could be attributed to their toxicity profiles like hemolytic activity, which hamper further progress of peptides as drug candidates. The accurate prediction of hemolytic peptides (HLPs) and its activity from the given peptides is one of the challenging tasks in immunoinformatics, which is essential for drug development and basic research. Although there are a few computational methods that have been proposed for this aspect, none of them are able to identify HLPs and their activities simultaneously. Results In this study, we proposed a two-layer prediction framework, called HLPpred-Fuse, that can accurately and automatically predict both hemolytic peptides (HLPs or non-HLPs) as well as HLPs activity (high and low). More specifically, feature representation learning scheme was utilized to generate 54 probabilistic features by integrating six different machine learning classifiers and nine different sequence-based encodings. Consequently, the 54 probabilistic features were fused to provide sufficiently converged sequence information which was used as an input to extremely randomized tree for the development of two final prediction models which independently identify HLP and its activity. Performance comparisons over empirical cross-validation analysis, independent test and case study against state-of-the-art methods demonstrate that HLPpred-Fuse consistently outperformed these methods in the identification of hemolytic activity. Availability and implementation For the convenience of experimental scientists, a web-based tool has been established at http://thegleelab.org/HLPpred-Fuse. Contact glee@ajou.ac.kr or watshara.sho@mahidol.ac.th or bala@ajou.ac.kr Supplementary information Supplementary data are available at Bioinformatics online. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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29. Multidisciplinary approaches for targeting the secretase protein family as a therapeutic route for Alzheimer's disease.
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Schaduangrat, Nalini, Prachayasittikul, Veda, Choomwattana, Saowapak, Wongchitrat, Prapimpun, Phopin, Kamonrat, Suwanjang, Wilasinee, Malik, Aijaz Ahmad, Vincent, Bruno, and Nantasenamat, Chanin
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ALZHEIMER'S disease - Abstract
The continual increase of the aging population worldwide renders Alzheimer's disease (AD) a global prime concern. Several attempts have been focused on understanding the intricate complexity of the disease's development along with the on‐ andgoing search for novel therapeutic strategies. Incapability of existing AD drugs to effectively modulate the pathogenesis or to delay the progression of the disease leads to a shift in the paradigm of AD drug discovery. Efforts aimed at identifying AD drugs have mostly focused on the development of disease‐modifying agents in which effects are believed to be long lasting. Of particular note, the secretase enzymes, a group of proteases responsible for the metabolism of the β‐amyloid precursor protein (βAPP) and β‐amyloid (Aβ) peptides production, have been underlined for their promising therapeutic potential. This review article attempts to comprehensively cover aspects related to the identification and use of drugs targeting the secretase enzymes. Particularly, the roles of secretases in the pathogenesis of AD and their therapeutic modulation are provided herein. Moreover, an overview of the drug development process and the contribution of computational (in silico) approaches for facilitating successful drug discovery are also highlighted along with examples of relevant computational works. Promising chemical scaffolds, inhibitors, and modulators against each class of secretases are also summarized herein. Additionally, multitarget secretase modulators are also taken into consideration in light of the current growing interest in the polypharmacology of complex diseases. Finally, challenging issues and future outlook relevant to the discovery of drugs targeting secretases are also discussed. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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30. PAAP: a web server for predicting antihypertensive activity of peptides.
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Win, Thet Su, Schaduangrat, Nalini, Prachayasittikul, Virapong, Nantasenamat, Chanin, and Shoombuatong, Watshara
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- 2018
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31. Probing the origin of estrogen receptor alpha inhibition via large-scale QSAR study.
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Suvannang, Naravut, Preeyanon, Likit, Malik, Aijaz Ahmad, Schaduangrat, Nalini, Shoombuatong, Watshara, Worachartcheewan, Apilak, Tantimongcolwat, Tanawut, and Nantasenamat, Chanin
- Published
- 2018
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32. TOWARDS UNDERSTANDING AROMATASE INHIBITORY ACTIVITY VIA QSAR MODELING.
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Shoombuatong, Watshara, Schaduangrat, Nalini, and Nantasenamat, Chanin
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AROMATASE inhibitors , *QSAR models , *ESTROGEN , *BIOSYNTHESIS , *SYNTHETIC enzymes , *BREAST cancer treatment - Abstract
Aromatase is a rate-limiting enzyme for estrogen biosynthesis that is overproduced in breast cancer tissue. To block the growth of breast tumors, aromatase inhibitors (AIs) are employed to bind and inhibit aromatase in order to lower the amount of estrogen produced in the body. Although a number of synthetic aromatase inhibitors have been released for clinical use in the treatment of hormone-receptor positive breast cancer, these inhibitors may lead to undesirable side effects (e.g. increased rash, diarrhea and vomiting; effects on the bone, brain and heart) and therefore, the search for novel AIs continues. Over the past decades, there has been an intense effort in employing medicinal chemistry and quantitative structure-activity relationship (QSAR) to shed light on the mechanistic basis of aromatase inhibition. To the best of our knowledge, this article constitutes the first comprehensive review of all QSAR studies of both steroidal and non-steroidal AIs that have been published in the field. Herein, we summarize the experimental setup of these studies as well as summarizing the key features that are pertinent for robust aromatase inhibition. [ABSTRACT FROM AUTHOR]
- Published
- 2018
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33. UNRAVELING THE BIOACTIVITY OF ANTICANCER PEPTIDES AS DEDUCED FROM MACHINE LEARNING.
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Shoombuatong, Watshara, Schaduangrat, Nalini, and Nantasenamat, Chanin
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BIOACTIVE compounds , *ANTINEOPLASTIC agents , *PEPTIDES , *CANCER treatment , *MACHINE learning - Abstract
Cancer imposes a global health burden as it represents one of the leading causes of morbidity and mortality while also giving rise to significant economic burden owing to the associated expenditures for its monitoring and treatment. In spite of advancements in cancer therapy, the low success rate and recurrence of tumor has necessitated the ongoing search for new therapeutic agents. Aside from drugs based on small molecules and protein-based biopharmaceuticals, there has been an intense effort geared towards the development of peptide-based therapeutics owing to its favorable and intrinsic properties of being relatively small, highly selective, potent, safe and low in production costs. In spite of these advantages, there are several inherent weaknesses that are in need of attention in the design and development of therapeutic peptides. An abundance of data on bioactive and therapeutic peptides have been accumulated over the years and the burgeoning area of artificial intelligence has set the stage for the lucrative utilization of machine learning to make sense of these large and high-dimensional data. This review summarizes the current state-of-the-art on the application of machine learning for studying the bioactivity of anticancer peptides along with future outlook of the field. Data and R codes used in the analysis herein are available on GitHub at https://github.com/Shoombuatong2527/anticancer-peptides-review. [ABSTRACT FROM AUTHOR]
- Published
- 2018
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34. PROTEOMIC AND BIOINFORMATIC DISCOVERY OF BIOMARKERS FOR DIABETIC NEPHROPATHY.
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Thippakorn, Chadinee, Schaduangrat, Nalini, and Nantasenamat, Chanin
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PROTEOMICS , *DIABETIC nephropathies , *DISEASE complications , *BIOMARKERS , *BIOINFORMATICS - Abstract
Diabetes is associated with numerous metabolic and vascular risk factors that contribute to a high rate of microvascular and macro-vascular disorders leading to mortality and morbidity from diabetic complications. In this case, the major cause of death in overall diabetic patients results from diabetic nephropathy (DN) or renal failure. The risk factors and mechanisms that correspond to the development of DN are not fully understood and so far, no specific and sufficient diagnostic biomarkers are currently available other than micro- or macroalbuminuria. Therefore, this review describes current and novel protein biomarkers in the context of DN as well as probable proteins biomarkers associated with pathological processes for the early stage of DN via proteomics data together with bioinformatics. In addition, the mechanisms involved in early development of diabetic vascular disorders and complications resulting from glucose induced oxidative stress will also be explored. [ABSTRACT FROM AUTHOR]
- Published
- 2018
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35. DATA MINING FOR THE IDENTIFICATION OF METABOLIC SYNDROME STATUS.
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Worachartcheewan, Apilak, Schaduangrat, Nalini, Prachayasittikul, Virapong, and Nantasenamat, Chanin
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DATA mining , *METABOLIC syndrome , *DIASTOLE (Cardiac cycle) , *CARDIOVASCULAR diseases , *TREATMENT of diabetes - Abstract
Metabolic syndrome (MS) is a condition associated with metabolic abnormalities that are characterized by central obesity (e.g. waist circumference or body mass index), hypertension (e.g. systolic or diastolic blood pressure), hyperglycemia (e.g. fasting plasma glucose) and dyslipidemia (e.g. triglyceride and high-density lipoprotein cholesterol). It is also associated with the development of diabetes mellitus (DM) type 2 and cardiovascular disease (CVD). Therefore, the rapid identification of MS is required to prevent the occurrence of such diseases. Herein, we review the utilization of data mining approaches for MS identification. Furthermore, the concept of quantitative population-health relationship (QPHR) is also presented, which can be defined as the elucidation/understanding of the relationship that exists between health parameters and health status. The QPHR modeling uses data mining techniques such as artificial neural network (ANN), support vector machine (SVM), principal component analysis (PCA), decision tree (DT), random forest (RF) and association analysis (AA) for modeling and construction of predictive models for MS characterization. The DT method has been found to outperform other data mining techniques in the identification of MS status. Moreover, the AA technique has proved useful in the discovery of in-depth as well as frequently occurring health parameters that can be used for revealing the rules of MS development. This review presents the potential benefits on the applications of data mining as a rapid identification tool for classifying MS. [ABSTRACT FROM AUTHOR]
- Published
- 2018
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36. OXIDATIVE RESPONSES AND DEFENSE MECHANISM OF HYPERPIGMENTED P. AERUGINOSA AS CHARACTERIZED BY PROTEOMICS AND METABOLOMICS.
- Author
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Thippakorn, Chadinee, Isarankura-Na-Ayudhya, Chartchalerm, Pannengpetch, Supitcha, Isarankura-Na-Ayudhya, Patcharee, Schaduangrat, Nalini, Nantasenamat, Chanin, and Prachayasittikul, Virapong
- Subjects
OXIDATIVE stress ,HYPERPIGMENTATION ,PSEUDOMONAS aeruginosa ,METABOLOMICS ,PROTEOMICS - Abstract
Pseudomonas aeruginosa is known to produce multiple types of pigment which are involved in its pathogenicity and survival in certain environments. Herein, we reported the identification of P. aeruginosa dark-brown hyperpigmented (HP) strains which have been isolated from clinical samples. In order to study the role of these darkbrown containing secretions, alterations of metabolic processes and cellular responses under microenvironment of this bacterial pathogen, two-dimensional gel electrophoresis (2-DE) in conjunction with peptide mass fingerprinting (PMF) were performed. Protein spots showing the most significant differences and high spot optical density values were selected for further characterization. Fold difference of protein expression levels among those spots were calculated. Three major groups of proteins including anti-oxidant enzyme such as catalase, alkyl hydroperoxide reductase and also iron-superoxide dismutase (Fe-SOD), transmembrane proteins as well as proteins involved in energy metabolism such as ATP synthase and pyruvate/2-oxoglutarate dehydrogenase were significantly decreased in P. aeruginosa HP. Whereas, malate syntase and isocitrate lyase, the key enzyme in glyoxylate cycle as well as alcohol dehydrogenase were significantly increased in P. aeruginosa HP, as compared to the reference strain ATCC 27853. Moreover, the HP exerted SOD-like activity with its IC50 equal to 0.26 mg/ml as measured by NBT assay. Corresponding to secretomic metabolome identification, elevated amounts of anti-oxidant compounds are detected in P. aeruginosa HP than those observed in ATCC 27853. Our findings indicated successful use of proteomics and metabolomics for understanding cell responses and defense mechanisms of P. aeruginosa dark-brown hyperpigmented strains upon surviving in its microenvironment. [ABSTRACT FROM AUTHOR]
- Published
- 2018
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- View/download PDF
37. Computational study on the origin of the cancer immunotherapeutic potential of B and T cell epitope peptides.
- Author
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Li, Hao, Schaduangrat, Nalini, Simeon, Saw, and Nantasenamat, Chanin
- Published
- 2017
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38. Exploring the origin of phosphodiesterase inhibition via proteochemometric modeling.
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Rasti, Behnam, Schaduangrat, Nalini, Shahangian, S. Shirin, and Nantasenamat, Chanin
- Published
- 2017
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39. CryoProtect: A Web Server for Classifying Antifreeze Proteins from Nonantifreeze Proteins.
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Pratiwi, Reny, Malik, Aijaz Ahmad, Schaduangrat, Nalini, Prachayasittikul, Virapong, Wikberg, Jarl E. S., Nantasenamat, Chanin, and Shoombuatong, Watshara
- Subjects
ANTIFREEZE proteins ,INTERNET servers ,AMINO acids ,DIPEPTIDES ,PREDICTION models - Abstract
Antifreeze protein (AFP) is an ice-binding protein that protects organisms from freezing in extremely cold environments. AFPs are found across a diverse range of species and, therefore, significantly differ in their structures. As there are no consensus sequences available for determining the ice-binding domain of AFPs, thus the prediction and characterization of AFPs from their sequence is a challenging task. This study addresses this issue by predicting AFPs directly from sequence on a large set of 478 AFPs and 9,139 non-AFPs using machine learning (e.g., random forest) as a function of interpretable features (e.g., amino acid composition, dipeptide composition, and physicochemical properties). Furthermore, AFPs were characterized using propensity scores and important physicochemical properties via statistical and principal component analysis. The predictive model afforded high performance with an accuracy of 88.28% and results revealed that AFPs are likely to be composed of hydrophobic amino acids as well as amino acids with hydroxyl and sulfhydryl side chains. The predictive model is provided as a free publicly available web server called CryoProtect for classifying query protein sequence as being either AFP or non-AFP. The data set and source code are for reproducing the results which are provided on GitHub. [ABSTRACT FROM AUTHOR]
- Published
- 2017
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40. Pretoria: An effective computational approach for accurate and high-throughput identification of CD8+ t-cell epitopes of eukaryotic pathogens.
- Author
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Charoenkwan, Phasit, Schaduangrat, Nalini, Pham, Nhat Truong, Manavalan, Balachandran, and Shoombuatong, Watshara
- Subjects
- *
INTERNET servers , *MACHINE learning , *T cells , *EPITOPES , *CD8 antigen , *MAJOR histocompatibility complex - Abstract
T-cells recognize antigenic epitopes present on major histocompatibility complex (MHC) molecules, triggering an adaptive immune response in the host. T-cell epitope (TCE) identification is challenging because of the extensive number of undetermined proteins found in eukaryotic pathogens, as well as MHC polymorphisms. In addition, conventional experimental approaches for TCE identification are time-consuming and expensive. Thus, computational approaches that can accurately and rapidly identify CD8+ T-cell epitopes (TCEs) of eukaryotic pathogens based solely on sequence information may facilitate the discovery of novel CD8+ TCEs in a cost-effective manner. Here, Pretoria (Predictor of CD8+ TCEs of eukaryotic pathogens) is proposed as the first stack-based approach for accurate and large-scale identification of CD8+ TCEs of eukaryotic pathogens. In particular, Pretoria enabled the extraction and exploration of crucial information embedded in CD8+ TCEs by employing a comprehensive set of 12 well-known feature descriptors extracted from multiple groups, including physicochemical properties, composition-transition-distribution, pseudo-amino acid composition, and amino acid composition. These feature descriptors were then utilized to construct a pool of 144 different machine learning (ML)-based classifiers based on 12 popular ML algorithms. Finally, the feature selection method was used to effectively determine the important ML classifiers for the construction of our stacked model. The experimental results indicated that Pretoria is an accurate and effective computational approach for CD8+ TCE prediction; it was superior to several conventional ML classifiers and the existing method in terms of the independent test, with an accuracy of 0.866, MCC of 0.732, and AUC of 0.921. Additionally, to maximize user convenience for high-throughput identification of CD8+ TCEs of eukaryotic pathogens, a user-friendly web server of Pretoria (http://pmlabstack.pythonanywhere.com/Pretoria) was developed and made freely available. • Identification of CD8+ T-cell epitopes (TCEs) of eukaryotic pathogens is crucial. • New stacked approach, Pretoria, is able to accurately and rapidly identify CD8+ TCEs. • Pretoria outperformed the existing method, and several machine learning models. • A web server (http://pmlabstack.pythonanywhere.com/Pretoria) was developed. • Pretoria facilitated high-throughput identification of CD8+ TCEs of pathogens. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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41. Correction: Shoombuatong, W., et al. iQSP: A Sequence-Based Tool for the Prediction and Analysis of Quorum Sensing Peptides via Chou's 5-Steps Rule and Informative Physicochemical Properties. Int. J. Mol. Sci. 2020, 21, 75.
- Author
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Charoenkwan, Phasit, Schaduangrat, Nalini, Nantasenamat, Chanin, Piacham, Theeraphon, and Shoombuatong, Watshara
- Subjects
- *
QUORUM sensing , *FORECASTING , *PEPTIDES - Abstract
Correction: Shoombuatong, W., et al. iQSP: A Sequence-Based Tool for the Prediction and Analysis of Quorum Sensing Peptides via Chou's 5-Steps Rule and Informative Physicochemical Properties. Int. J. Mol. [Extracted from the article]
- Published
- 2020
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42. PVPred-SCM: Improved Prediction and Analysis of Phage Virion Proteins Using a Scoring Card Method.
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Charoenkwan, Phasit, Kanthawong, Sakawrat, Schaduangrat, Nalini, Yana, Janchai, and Shoombuatong, Watshara
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BACTERIOPHAGES ,FORECASTING ,VIRION ,SUPPORT vector machines ,PROTEINS ,DIPEPTIDES - Abstract
Although, existing methods have been successful in predicting phage (or bacteriophage) virion proteins (PVPs) using various types of protein features and complex classifiers, such as support vector machine and naïve Bayes, these two methods do not allow interpretability. However, the characterization and analysis of PVPs might be of great significance to understanding the molecular mechanisms of bacteriophage genetics and the development of antibacterial drugs. Hence, we herein proposed a novel method (PVPred-SCM) based on the scoring card method (SCM) in conjunction with dipeptide composition to identify and characterize PVPs. In PVPred-SCM, the propensity scores of 400 dipeptides were calculated using the statistical discrimination approach. Rigorous independent validation test showed that PVPred-SCM utilizing only dipeptide composition yielded an accuracy of 77.56%, indicating that PVPred-SCM performed well relative to the state-of-the-art method utilizing a number of protein features. Furthermore, the propensity scores of dipeptides were used to provide insights into the biochemical and biophysical properties of PVPs. Upon comparison, it was found that PVPred-SCM was superior to the existing methods considering its simplicity, interpretability, and implementation. Finally, in an effort to facilitate high-throughput prediction of PVPs, we provided a user-friendly web-server for identifying the likelihood of whether or not these sequences are PVPs. It is anticipated that PVPred-SCM will become a useful tool or at least a complementary existing method for predicting and analyzing PVPs. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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- View/download PDF
43. iQSP: A Sequence-Based Tool for the Prediction and Analysis of Quorum Sensing Peptides via Chou's 5-Steps Rule and Informative Physicochemical Properties.
- Author
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Charoenkwan, Phasit, Schaduangrat, Nalini, Nantasenamat, Chanin, Piacham, Theeraphon, and Shoombuatong, Watshara
- Subjects
- *
QUORUM sensing , *INTERNET servers , *AMINO acid sequence , *PEPTIDES , *SUPPORT vector machines , *SCIENTISTS - Abstract
Understanding of quorum-sensing peptides (QSPs) in their functional mechanism plays an essential role in finding new opportunities to combat bacterial infections by designing drugs. With the avalanche of the newly available peptide sequences in the post-genomic age, it is highly desirable to develop a computational model for efficient, rapid and high-throughput QSP identification purely based on the peptide sequence information alone. Although, few methods have been developed for predicting QSPs, their prediction accuracy and interpretability still requires further improvements. Thus, in this work, we proposed an accurate sequence-based predictor (called iQSP) and a set of interpretable rules (called IR-QSP) for predicting and analyzing QSPs. In iQSP, we utilized a powerful support vector machine (SVM) cooperating with 18 informative features from physicochemical properties (PCPs). Rigorous independent validation test showed that iQSP achieved maximum accuracy and MCC of 93.00% and 0.86, respectively. Furthermore, a set of interpretable rules IR-QSP was extracted by using random forest model and the 18 informative PCPs. Finally, for the convenience of experimental scientists, the iQSP web server was established and made freely available online. It is anticipated that iQSP will become a useful tool or at least as a complementary existing method for predicting and analyzing QSPs. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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- View/download PDF
44. Meta-iAVP: A Sequence-Based Meta-Predictor for Improving the Prediction of Antiviral Peptides Using Effective Feature Representation.
- Author
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Schaduangrat, Nalini, Nantasenamat, Chanin, Prachayasittikul, Virapong, and Shoombuatong, Watshara
- Subjects
- *
INTERNET servers , *AMINO acid sequence , *PEPTIDES , *ANTIVIRAL agents , *DRUG development , *MACHINE learning - Abstract
In spite of the large-scale production and widespread distribution of vaccines and antiviral drugs, viruses remain a prominent human disease. Recently, the discovery of antiviral peptides (AVPs) has become an influential antiviral agent due to their extraordinary advantages. With the avalanche of newly-found peptide sequences in the post-genomic era, there is a great demand to develop a sequence-based predictor for timely identifying AVPs as this information is very useful for both basic research and drug development. In this study, we propose a novel sequence-based meta-predictor with an effective feature representation, called Meta-iAVP, for the accurate prediction of AVPs from given peptide sequences. Herein, the effective feature representation was extracted from a set of prediction scores derived from various machine learning algorithms and types of features. To the best of our knowledge, the model proposed herein represents the first meta-based approach for the prediction of AVPs. An overall accuracy and Matthews correlation coefficient of 95.20% and 0.90, respectively, was achieved from the independent test set on an objective benchmark dataset. Comparative analysis suggested that Meta-iAVP was superior to that of existing methods and therefore represents a useful tool for AVP prediction. Finally, in an effort to facilitate high-throughput prediction of AVPs, the model was deployed as the Meta-iAVP web server and is made freely available online at http://codes.bio/meta-iavp/ where users can submit query peptide sequences for determining the likelihood of whether or not these peptides are AVPs. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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- View/download PDF
45. TargetAntiAngio: A Sequence-Based Tool for the Prediction and Analysis of Anti-Angiogenic Peptides.
- Author
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Laengsri, Vishuda, Nantasenamat, Chanin, Schaduangrat, Nalini, Nuchnoi, Pornlada, Prachayasittikul, Virapong, and Shoombuatong, Watshara
- Subjects
CELL migration inhibition ,INTERNET servers ,PEPTIDE analysis ,CYCLIC peptides ,TUMOR growth ,PEPTIDES ,BLOOD vessels - Abstract
Cancer remains one of the major causes of death worldwide. Angiogenesis is crucial for the pathogenesis of various human diseases, especially solid tumors. The discovery of anti-angiogenic peptides is a promising therapeutic route for cancer treatment. Thus, reliably identifying anti-angiogenic peptides is extremely important for understanding their biophysical and biochemical properties that serve as the basis for the discovery of new anti-cancer drugs. This study aims to develop an efficient and interpretable computational model called TargetAntiAngio for predicting and characterizing anti-angiogenic peptides. TargetAntiAngio was developed using the random forest classifier in conjunction with various classes of peptide features. It was observed via an independent validation test that TargetAntiAngio can identify anti-angiogenic peptides with an average accuracy of 77.50% on an objective benchmark dataset. Comparisons demonstrated that TargetAntiAngio is superior to other existing methods. In addition, results revealed the following important characteristics of anti-angiogenic peptides: (i) disulfide bond forming Cys residues play an important role for inhibiting blood vessel proliferation; (ii) Cys located at the C-terminal domain can decrease endothelial formatting activity and suppress tumor growth; and (iii) Cyclic disulfide-rich peptides contribute to the inhibition of angiogenesis and cell migration, selectivity and stability. Finally, for the convenience of experimental scientists, the TargetAntiAngio web server was established and made freely available online. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
46. ACPred: A Computational Tool for the Prediction and Analysis of Anticancer Peptides.
- Author
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Schaduangrat, Nalini, Nantasenamat, Chanin, Prachayasittikul, Virapong, and Shoombuatong, Watshara
- Abstract
Anticancer peptides (ACPs) have emerged as a new class of therapeutic agent for cancer treatment due to their lower toxicity as well as greater efficacy, selectivity and specificity when compared to conventional small molecule drugs. However, the experimental identification of ACPs still remains a time-consuming and expensive endeavor. Therefore, it is desirable to develop and improve upon existing computational models for predicting and characterizing ACPs. In this study, we present a bioinformatics tool called the ACPred, which is an interpretable tool for the prediction and characterization of the anticancer activities of peptides. ACPred was developed by utilizing powerful machine learning models (support vector machine and random forest) and various classes of peptide features. It was observed by a jackknife cross-validation test that ACPred can achieve an overall accuracy of 95.61% in identifying ACPs. In addition, analysis revealed the following distinguishing characteristics that ACPs possess: (i) hydrophobic residue enhances the cationic properties of α-helical ACPs resulting in better cell penetration; (ii) the amphipathic nature of the α-helical structure plays a crucial role in its mechanism of cytotoxicity; and (iii) the formation of disulfide bridges on β-sheets is vital for structural maintenance which correlates with its ability to kill cancer cells. Finally, for the convenience of experimental scientists, the ACPred web server was established and made freely available online. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
47. Tackling the Antibiotic Resistance Caused by Class A β-Lactamases through the Use of β-Lactamase Inhibitory Protein.
- Author
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Eiamphungporn, Warawan, Schaduangrat, Nalini, Malik, Aijaz Ahmad, and Nantasenamat, Chanin
- Subjects
- *
ANTIBIOTICS , *DRUG resistance , *COMMUNICABLE diseases , *BETA lactamases , *CLAVULANIC acid , *STREPTOMYCES - Abstract
β -Lactams are the most widely used and effective antibiotics for the treatment of infectious diseases. Unfortunately, bacteria have developed several mechanisms to combat these therapeutic agents. One of the major resistance mechanisms involves the production of β -lactamase that hydrolyzes the β -lactam ring thereby inactivating the drug. To overcome this threat, the small molecule β -lactamase inhibitors (e.g., clavulanic acid, sulbactam and tazobactam) have been used in combination with β -lactams for treatment. However, the bacterial resistance to this kind of combination therapy has evolved recently. Therefore, multiple attempts have been made to discover and develop novel broad-spectrum β -lactamase inhibitors that sufficiently work against β -lactamase producing bacteria. β -lactamase inhibitory proteins (BLIPs) (e.g., BLIP, BLIP-I and BLIP-II) are potential inhibitors that have been found from soil bacterium
Streptomyces spp. BLIPs bind and inhibit a wide range of class A β -lactamases from a diverse set of Gram-positive and Gram-negative bacteria, including TEM-1, PC1, SME-1, SHV-1 and KPC-2. To the best of our knowledge, this article represents the first systematic review on β -lactamase inhibitors with a particular focus on BLIPs and their inherent properties that favorably position them as a source of biologically-inspired drugs to combat antimicrobial resistance. Furthermore, an extensive compilation of binding data from β -lactamase–BLIP interaction studies is presented herein. Such information help to provide key insights into the origin of interaction that may be useful for rationally guiding future drug design efforts. [ABSTRACT FROM AUTHOR]- Published
- 2018
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48. iBitter-SCM: Identification and characterization of bitter peptides using a scoring card method with propensity scores of dipeptides.
- Author
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Charoenkwan, Phasit, Yana, Janchai, Schaduangrat, Nalini, Nantasenamat, Chanin, Hasan, Md. Mehedi, and Shoombuatong, Watshara
- Subjects
- *
INTERNET servers , *PEPTIDES , *K-nearest neighbor classification , *AMINO acid sequence , *BITTERNESS (Taste) , *PLANT toxins , *AMINO acids - Abstract
In general, hydrolyzed proteins, plant-derived alkaloids and toxins displays unpleasant bitter taste. Thus, the perception of bitter taste plays a crucial role in protecting animals from poisonous plants and environmental toxins. Therapeutic peptides have attracted great attention as a new drug class. The successful identification and characterization of bitter peptides are essential for drug development and nutritional research. Owing to the large volume of peptides generated in the post-genomic era, there is an urgent need to develop computational methods for rapidly and effectively discriminating bitter peptides from non-bitter peptides. To the best of our knowledge, there is yet no computational model for predicting and analyzing bitter peptides using sequence information. In this study, we present for the first time a computational model called the iBitter-SCM that can predict the bitterness of peptides directly from their amino acid sequence without any dependence on their functional domain or structural information. iBitter-SCM is a simple and effective method that was built using the scoring card method (SCM) with estimated propensity scores of amino acids and dipeptides. Our benchmarking results demonstrated that iBitter-SCM achieved an accuracy and Matthews coefficient correlation of 84.38% and 0.688, respectively, on the independent dataset. Rigorous independent test indicated that iBitter-SCM was superior to those of other widely used machine-learning classifiers (e.g. k-nearest neighbor, naive Bayes, decision tree and random forest) owing to its simplicity, interpretability and implementation. Furthermore, the analysis of estimated propensity scores of amino acids and dipeptides were performed to provide a better understanding of the biophysical and biochemical properties of bitter peptides. For the convenience of experimental scientists, a web server is provided publicly at http://camt.pythonanywhere.com/iBitter-SCM. It is anticipated that iBitter-SCM can serve as an important tool to facilitate the high-throughput prediction and de novo design of bitter peptides. • This study presents for the first time a computational model that can predict peptide sequences with or without bitter taste. • iBitter-SCM is a simple yet effective method built by using SCM method with estimated propensity scores of dipeptides. • iBitter-SCM was superior to widely used classifiers, considering its simplicity, interpretability, and implementation. • The propensity scores of amino acids provide a better understanding of the physicochemical properties of bitter peptides • The iBitter-SCM web server was established and made freely available online at http://camt.pythonanywhere.com/iBitter-SCM. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
49. Accelerating the identification of the allergenic potential of plant proteins using a stacked ensemble-learning framework.
- Author
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Charoenkwan P, Chumnanpuen P, Schaduangrat N, and Shoombuatong W
- Abstract
Plant-allergenic proteins (PAPs) have the potential to induce allergic reactions in certain individuals. While these proteins are generally innocuous for the majority of people, they can elicit an immune response in those with particular sensitivities. Thus, screening and prioritizing the allergenic potential of plant proteins is indispensable for the development of diagnostic tools, therapeutic interventions or medications to treat allergic reactions. However, investigating the allergenic potential of plant proteins based on experimental methods is costly and labour-intensive. Therefore, we develop StackPAP, a three-layer stacking ensemble framework for accurate large-scale identification of PAPs. In StackPAP, at the first layer, we conducted a comprehensive analysis of an extensive set of feature descriptors. Subsequently, we selected and fused five potential sequence-based feature descriptors, including amphiphilic pseudo-amino acid composition, dipeptide deviation from expected mean, amino acid composition, pseudo amino acid composition and dipeptide composition. Additionally, we applied an efficient genetic algorithm (GA-SAR) to determine informative feature sets. In the second layer, 12 powerful machine learning (ML) methods, in combination with all the informative feature sets, were employed to construct a pool of base classifiers. Finally, 13 potential base classifiers were selected using the GA-SAR method and combined to develop the final meta-classifier. Our experimental results revealed the promising prediction performance of StackPAP, with an accuracy, Matthew's correlation coefficient and AUC of 0.984, 0.969 and 0.993, respectively, as judged by the independent test dataset. In conclusion, both cross-validation and independent test results indicated the superior performance of StackPAP compared with several ML-based classifiers. To accelerate the identification of the allergenicity of plant proteins, we developed a user-friendly web server for StackPAP (https://pmlabqsar.pythonanywhere.com/StackPAP). We anticipate that StackPAP will be an efficient and useful tool for rapidly screening PAPs from a vast number of plant proteins.Communicated by Ramaswamy H. Sarma.
- Published
- 2024
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50. The role of ncRNA regulatory mechanisms in diseases-case on gestational diabetes.
- Author
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Gao D, Ren L, Hao YD, Schaduangrat N, Liu XW, Yuan SS, Yang YH, Wang Y, Shoombuatong W, and Ding H
- Subjects
- Humans, Female, Pregnancy, Genome, Human, RNA, Untranslated genetics, Biomarkers, Diabetes, Gestational genetics, Carbohydrate Metabolism, Inborn Errors, Malabsorption Syndromes
- Abstract
Non-coding RNAs (ncRNAs) are a class of RNA molecules that do not have the potential to encode proteins. Meanwhile, they can occupy a significant portion of the human genome and participate in gene expression regulation through various mechanisms. Gestational diabetes mellitus (GDM) is a pathologic condition of carbohydrate intolerance that begins or is first detected during pregnancy, making it one of the most common pregnancy complications. Although the exact pathogenesis of GDM remains unclear, several recent studies have shown that ncRNAs play a crucial regulatory role in GDM. Herein, we present a comprehensive review on the multiple mechanisms of ncRNAs in GDM along with their potential role as biomarkers. In addition, we investigate the contribution of deep learning-based models in discovering disease-specific ncRNA biomarkers and elucidate the underlying mechanisms of ncRNA. This might assist community-wide efforts to obtain insights into the regulatory mechanisms of ncRNAs in disease and guide a novel approach for early diagnosis and treatment of disease., (© The Author(s) 2024. Published by Oxford University Press.)
- Published
- 2023
- Full Text
- View/download PDF
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