Browse publications by year: 2024

  1. Musa MFC, Ab-Murat N, Ming CJ, Ramle NSM, Sabri SZA
    Int J Dent Hyg, 2024 Dec 17.
    PMID: 39686854 DOI: 10.1111/idh.12895
    OBJECTIVES: To explore the Malaysian dental therapists' perceptions regarding the provisions concerning them in the new dental act and potential market changes, considering their current career motivations and expectations.

    METHODS: Dental therapists from two major public dental organisations in the East-Peninsular Malaysia (n = 26) were invited to participate in an audiotaped semi-structured interview using a pre-tested topic-guide informed by workforce policy and research literature. The qualitative data were transcribed and analysed using Framework Analysis.

    RESULTS: The research conducted with dental therapists (n = 26) identified four motivation domains namely 'altruism', 'personal and academic inspiration', 'profession characteristics' and 'career advising and social influences' as key factors motivating their choice of a professional career as dental therapists, influenced by work-life balance and financial stability. They were also aware of the new dental act and its potential implications, particularly regarding their future career expectations. The majority felt the necessity 'to improve their skills and knowledge' within the first 5 years as part of their short-term career plans. A few participants expressed a desire to 'pursue a higher level of education' and 'wished to join the private sector' in the long-term. They perceived the possibility of 'working in the private sector' to increase their income and believed that they did not require any additional training for such a transition.

    CONCLUSION: Malaysian dental therapists welcomed the changes in the new act, which allow them to work across sectors. Many perceived themselves as adequately motivated and equipped to transition to different work settings without requiring additional training.

  2. Ahmad AL, Sanchez-Bornot JM, Sotero RC, Coyle D, Idris Z, Faye I
    PeerJ, 2024;12:e18490.
    PMID: 39686993 DOI: 10.7717/peerj.18490
    BACKGROUND: Alzheimer's Disease (AD) poses a major challenge as a neurodegenerative disorder, and early detection is critical for effective intervention. Magnetic resonance imaging (MRI) is a critical tool in AD research due to its availability and cost-effectiveness in clinical settings.

    OBJECTIVE: This study aims to conduct a comprehensive analysis of machine learning (ML) methods for MRI-based biomarker selection and classification to investigate early cognitive decline in AD. The focus to discriminate between classifying healthy control (HC) participants who remained stable and those who developed mild cognitive impairment (MCI) within five years (unstable HC or uHC).

    METHODS: 3-Tesla (3T) MRI data from the Alzheimer's Disease Neuroimaging Initiative (ADNI) and Open Access Series of Imaging Studies 3 (OASIS-3) were used, focusing on HC and uHC groups. Freesurfer's recon-all and other tools were used to extract anatomical biomarkers from subcortical and cortical brain regions. ML techniques were applied for feature selection and classification, using the MATLAB Classification Learner (MCL) app for initial analysis, followed by advanced methods such as nested cross-validation and Bayesian optimization, which were evaluated within a Monte Carlo replication analysis as implemented in our customized pipeline. Additionally, polynomial regression-based data harmonization techniques were used to enhance ML and statistical analysis. In our study, ML classifiers were evaluated using performance metrics such as Accuracy (Acc), area under the receiver operating characteristic curve (AROC), F1-score, and a normalized Matthew's correlation coefficient (MCC').

    RESULTS: Feature selection consistently identified biomarkers across ADNI and OASIS-3, with the entorhinal, hippocampus, lateral ventricle, and lateral orbitofrontal regions being the most affected. Classification results varied between balanced and imbalanced datasets and between ADNI and OASIS-3. For ADNI balanced datasets, the naíve Bayes model using z-score harmonization and ReliefF feature selection performed best (Acc = 69.17%, AROC = 77.73%, F1 = 69.21%, MCC' = 69.28%). For OASIS-3 balanced datasets, SVM with zscore-corrected data outperformed others (Acc = 66.58%, AROC = 72.01%, MCC' = 66.78%), while logistic regression had the best F1-score (66.68%). In imbalanced data, RUSBoost showed the strongest overall performance on ADNI (F1 = 50.60%, AROC = 81.54%) and OASIS-3 (MCC' = 63.31%). Support vector machine (SVM) excelled on ADNI in terms of Acc (82.93%) and MCC' (70.21%), while naïve Bayes performed best on OASIS-3 by F1 (42.54%) and AROC (70.33%).

    CONCLUSION: Data harmonization significantly improved the consistency and performance of feature selection and ML classification, with z-score harmonization yielding the best results. This study also highlights the importance of nested cross-validation (CV) to control overfitting and the potential of a semi-automatic pipeline for early AD detection using MRI, with future applications integrating other neuroimaging data to enhance prediction.

    MeSH terms: Machine Learning*; Aged; Aged, 80 and over; Bayes Theorem; Brain/metabolism; Brain/pathology; Female; Humans; Male; Early Diagnosis; Neuroimaging/methods
  3. Zhang J, Sun Z, Deng Q, Yu Y, Dian X, Luo J, et al.
    PeerJ, 2024;12:e18573.
    PMID: 39687001 DOI: 10.7717/peerj.18573
    BACKGROUND: Despite extensive knowledge of tuberculosis (TB) and its control, there remains a significant gap in understanding the comprehensive impact of the COVID-19 pandemic on TB incidence patterns. This study aims to explore the impact of COVID-19 on the pattern of pulmonary tuberculosis in China and examine the application of time series models in the analysis of these patterns, providing valuable insights for TB prevention and control.

    METHODS: We used pre-COVID-19 pulmonary tuberculosis (PTB) data (2007-2018) to fit SARIMA, Prophet, and LSTM models, assessing their ability to predict PTB incidence trends. These models were then applied to compare the predicted PTB incidence patterns with actual reported cases during the COVID-19 pandemic (2020-2023), using deviations between predicted and actual values to reflect the impact of COVID-19 countermeasures on PTB incidence.

    RESULTS: Prior to the COVID-19 outbreak, PTB incidence in China exhibited a steady decline with strong seasonal fluctuations, characterized by two annual peaks-one in March and another in December. These seasonal trends persisted until 2019. During the COVID-19 pandemic, there was a significant reduction in PTB cases, with actual reported cases falling below the predicted values. The disruption in PTB incidence appears to be temporary, as 2023 data indicate a gradual return to pre-pandemic trends, though the incidence rate remains slightly lower than pre-COVID levels. Additionally, we compared the fitting and forecasting performance of the SARIMA, Prophet, and LSTM models using RMSE (root mean squared error), MAE (mean absolute error), and MAPE (mean absolute percentage error) indexes prior to the COVID-19 outbreak. We found that the Prophet model had the lowest values for all three indexes, demonstrating the best fitting and prediction performance.

    CONCLUSIONS: The COVID-19 pandemic has had a temporary but significant impact on PTB incidence in China, leading to a reduction in reported cases during the pandemic. However, as pandemic control measures relax and the healthcare system stabilizes, PTB incidence patterns are expected to return to pre-COVID-19 levels. The Prophet model demonstrated the best predictive performance and proves to be a valuable tool for analyzing PTB trends and guiding public health planning in the post-pandemic era.

    MeSH terms: China/epidemiology; Humans; Seasons; Incidence; Pandemics
  4. Qing H, Ibrahim R, Nies HW
    iScience, 2024 Dec 20;27(12):111412.
    PMID: 39687010 DOI: 10.1016/j.isci.2024.111412
    With the increasing popularity of location-based services (LBSs), safeguarding location privacy has become critically important. Traditional methods often struggle to balance the intensity of privacy protection with service quality. To address this challenge, this research proposes the comprehensive location privacy enhanced model (CLPEM), which enhances personalized privacy protection by integrating dynamic weight allocation at the policy layer, incorporating a user feedback mechanism, and designing tailored privacy strategies for various scenarios. Additionally, the model employs data fusion and optimization techniques to enhance the usability of location data while ensuring effective privacy protection. Our experimental results demonstrate that CLPEM outperforms existing technologies in terms of privacy strength, data availability, and user satisfaction, providing a robust technical framework for location privacy and paving the way for future research and applications.
  5. Sutradhar A, Akter S, Shamrat FMJM, Ghosh P, Zhou X, Idris MYIB, et al.
    Heliyon, 2024 Sep 15;10(17):e36556.
    PMID: 39687050 DOI: 10.1016/j.heliyon.2024.e36556
    The worldwide prevalence of thyroid disease is on the rise, representing a chronic condition that significantly impacts global mortality rates. Machine learning (ML) approaches have demonstrated potential superiority in mitigating the occurrence of this disease by facilitating early detection and treatment. However, there is a growing demand among stakeholders and patients for reliable and credible explanations of the generated predictions in sensitive medical domains. Hence, we propose an interpretable thyroid classification model to illustrate outcome explanations and investigate the contribution of predictive features by utilizing explainable AI. Two real-time thyroid datasets underwent various preprocessing approaches, addressing data imbalance issues using the Synthetic Minority Over-sampling Technique with Edited Nearest Neighbors (SMOTE-ENN). Subsequently, two hybrid classifiers, namely RDKVT and RDKST, were introduced to train the processed and selected features from Univariate and Information Gain feature selection techniques. Following the training phase, the Shapley Additive Explanation (SHAP) was applied to identify the influential characteristics and corresponding values contributing to the outcomes. The conducted experiments ultimately concluded that the presented RDKST classifier achieved the highest performance, demonstrating an accuracy of 98.98 % when trained on Information Gain selected features. Notably, the features T3 (triiodothyronine), TT4 (total thyroxine), TSH (thyroid-stimulating hormone), FTI (free thyroxine index), and T3_measured significantly influenced the generated outcomes. By balancing classification accuracy and outcome explanation ability, this study aims to enhance the clinical decision-making process and improve patient care.
  6. Fernandez MI, Go YI, Wong DML, Früh WG
    Heliyon, 2024 Dec 15;10(23):e40691.
    PMID: 39687088 DOI: 10.1016/j.heliyon.2024.e40691
    Carbon emissions are increasing due to continued urban developments and the growth of the human population, leading to environmental issues such as global warming. Moving towards the future, projected population growth will cause an increase in energy demand. Without the transition to cleaner energy generation, a high dependency on electricity generation by fossil fuels will emit more harmful gases, worsening the impacts of global warming. Therefore, the energy industry is moving towards cleaner alternatives through renewable energy (RE) technologies. However, in the future power grid, more technological development and implementation of cutting-edge research methods will be required to upsurge the percentage of clean electricity generation to attain net zero. Renewables, energy storage systems (ESS), grid technologies, and building energy management systems (BEMS) are key technologies emerging to aid green electrification in the electricity, industry, commercial and transportation sectors. This review discusses the technical challenges and solutions that contribute towards achieving net-zero energy systems. A systematic review was conducted on research methods related to the optimal planning of renewable energy systems, ESS, power system devices, and BEMS which are research areas that are moving towards being optimally integrated in the future energy system. Based on the review, we propose new gaps to be addressed in the development of energy system modelling tools. These tools should seamlessly integrate methods for energy storage related to voltage support, microgrid dispatch strategies, optimal reactive power flow in electrical networks, and energy management in buildings. This integration will enhance the capability of these tools to incorporate detailed analyses into broader energy balance simulations for large geographical regions. This review paper aims to guide researchers in identifying and addressing specific gaps in future research directions within these research areas, thereby advancing the knowledge base and informing subsequent studies.
  7. Mahmoud VL, Shayesteh R, Foong Yun Loh TK, Chan SW, Sethi G, Burgess K, et al.
    Heliyon, 2024 Dec 15;10(23):e39699.
    PMID: 39687111 DOI: 10.1016/j.heliyon.2024.e39699
    Diabetes mellitus is a prevalent metabolic disorder worldwide. A variety of antidiabetic medications have been developed to help manage blood glucose levels in diabetic patients, but adverse reactions and efficacy loss over time have spurred research into new therapeutic agents. In view of this, investigations into the antidiabetic effect of herbal products have been encouraged due to their potential availability, inexpensiveness, and relatively minimal side effects. This review explores the antidiabetic potentials of the eight most promising medicinal plants in terms of molecular mechanisms, phytochemistry, toxicology, and efficacy. These plant extracts have gone through clinical trials and demonstrated good control of blood glucose levels by increasing serum insulin levels, enhancing tissue glucose uptake, and/or decreasing intestinal glucose uptake. Yet, medicinal plants are far from being able to replace conventional antidiabetic drugs for patient management but they have the potential for further development if rigorous clinical trials on their mechanisms, delivery, and dose regimen are performed. To date, no study has been performed to isolate and characterize active compounds in these plant extracts, suggesting that further investigations in this area would be the next step to advance this field.
  8. Kakar SK, Wang J, Arshed N, Le Hien TT, Abdullahi NM
    Heliyon, 2024 Dec 15;10(23):e40683.
    PMID: 39687159 DOI: 10.1016/j.heliyon.2024.e40683
    Human activities, primarily economic growth, and technological innovation, threaten global biodiversity. This study utilizes 22-year panel data from 87 developing countries and a novel cross-sectional heterogeneous factor analysis-based financial technology index to investigate how economic growth, renewable energy consumption, technological innovation, natural resources, and financial technology affect biodiversity. To account for cross-sectional dependency, this study employed a Panel Autoregressive Distributive Lagged with Pooled Mean Group specifications within the Driscoll and Kraay standard error estimator. The findings revealed that the log of Gross Domestic Product (GDP) had an inverted U-shaped effect. Moreover, economic growth, renewable energy, and FinTech can improve biodiversity conservation. Traditionally, technological innovation and unregulated resource exploitation have posed threats to biodiversity. This study focused on responsible economic development and practical solutions to biodiversity threats posed by technological innovation and unrestrained resource use. FinTech can promote sustainable behaviors and divert funds from ecosystem-harming projects to biodiversity-friendly ones. Innovative financial instruments enable stakeholders to balance nature. This study demonstrates that FinTech, renewable energy, and responsible economic growth can help reverse biodiversity loss. We provide the policy implications of our research.
  9. Zhang D, Soh KG, Chan YM, Feng X, Bashir M, Xiao W
    Heliyon, 2024 Dec 15;10(23):e39531.
    PMID: 39687180 DOI: 10.1016/j.heliyon.2024.e39531
    OBJECTIVES: Fundamental motor skills (FMS) are the foundation of children's movement, requiring tailored training and guidance for development. As an emerging training method, functional training is optimistic in promoting the development of children's fundamental motor skills. However, current studies have not assessed the effect of functional training on fundamental motor skills. This review aims to address this gap by evaluating the effects of functional training on fundamental motor skills.

    DESIGN: A search was conducted in five databases: PubMed, Scopus, ProQuest, Web of Science, and SPORT Discus, from January 2000 to June 2023.

    METHOD: This search followed the Preferred Reporting Items for Systematic Reviews and Meta-Analyses guidelines.

    RESULTS: The results of the search identified a total of twenty-six articles. Improvements were primarily demonstrated in the three main areas of fundamental motor skills: locomotor skills (n = 17), balance skills (n = 10), and object control skills (n = 2).

    CONCLUSIONS: The results suggest that functional training programs can improve children's fundamental motor skills. Existing evidence also concludes that functional training significantly impacts locomotor and balance skills, whereas further research is required to confirm its positive effects on object control skills.

  10. Mehmood R, Jakarni FM, Muniandy R, Hassim S, Nik Daud NN, Ansari AH
    Heliyon, 2024 Dec 15;10(23):e40737.
    PMID: 39687189 DOI: 10.1016/j.heliyon.2024.e40737
    The significant growth in road infrastructure worldwide over the last decade has resulted in a notable increase in the demand for asphalt binder. However, the utilization of asphalt binder in the road industry poses challenges to environmental sustainability and economic standpoints. The application of vehicular loads and exposure to environmental factors throughout the service life of roads contribute to the deterioration of binder properties, such as hardening and aging, ultimately leading to premature road failure. Therefore, researchers have strived to explore further alternative materials to overcome these challenges, to improve the performance of flexible pavements. Waste Engine Oil (WEO) is one such material that has shown promising effects on asphalt binder. This review aims to conduct an in-depth analysis of previous literature to explore the potential utilization of WEO as a modifier and rejuvenator for asphalt binders. WEO effectively rejuvenates aged asphalt binders, however, the required quantity for rejuvenation varies depending on asphalt characteristics. It was found that the inclusion of the WEO as asphalt modifier significantly affects the high-temperature properties of the WEO-modified asphalt binder. Conversely, WEO addition enhances lower temperature properties, improving thermal and fatigue resistance. Furthermore, the compromise properties of WEO-modified asphalt are enhanced by incorporating various additional additives such as lignin, SBS, polyphosphoric acid and crumb rubber. It was revealed that composite modification can partially substitute 8-15 % asphalt binder, which would be a way forward in cost-effective sustainable construction in the pavement industry. However, additional research is necessary to explore futuristic advancements in WEO modification technology.
  11. Khawaja AW, Kamari NAM, Mohd Zainuri MAA, Abd Halim S, Zulkifley MA, Ansari S, et al.
    Heliyon, 2024 Oct 15;10(19):e38944.
    PMID: 39687439 DOI: 10.1016/j.heliyon.2024.e38944
    Load inconsistency has disrupted the power system, causing rotor angle fluctuation that leads to angle instability in the system. This research suggests an innovative proportional integral derivative with filter (PIDF)-based thyristor-controlled series compensator (TCSC) controller that utilise an evolutionary programming sine cosine algorithm (EPSCA) for hybrid optimisation to increase the angle stability of the power system. The challenge of the PIDF-TCSC design is transformed into an optimal control problem with respect to performance indices, such as the maximum imaginary part of system eigenvalues, damping ratio and damping factor, where another multi-objective function is utilised to determine the best stabiliser settings. Eigenvalue analysis is used to conduct the stability study in a linearised paradigm of the single-machine infinite-bus (SMIB) network. The resilience of the PIDF controller was tested using a SMIB power network under various operating circumstances. Simulation results are used to evaluate the system's effectiveness with the proposed optimised PIDF-TCSC controller to that of the system using the proportional integral derivative, proportional integral, and base case PIDF-TCSC approaches. The research findings demonstrate the efficacy of EPSCA in implementing PIDF-TCSC motif and its excellent resilient performance for improving power system stability as related to other strategies in various situations.
  12. Foo XY, Abdul Rahim NA, Lee LK
    MethodsX, 2024 Dec;13:103069.
    PMID: 39687598 DOI: 10.1016/j.mex.2024.103069
    Mental health is a state of mind influences one thinking, feeling and acting from inside and outside that are vital for children's normal growth and development. Psychological distress may results in serious mental health problem if left untreated. Hence, early diagnosis can largely improve the condition from being deteriorating. This study determined the prevalence of psychological distress and its associated risk factors among children in Penang, Malaysia. The study applied stratified multistage cluster sampling for the recruitment of children, and their socio-demographics background, health and lifestyle practices, and the prevalence and risk factors of psychological distress were succinctly studied. The study provides a fundamental platform for informing parents and policy makers about psychological distress, and the need to strategize potential health intervention for achieving optimum human well-being.•Stratified multistage cluster sampling was useful to study the prevalence and risk factors of psychological distress in a children population.•DASS-Y is robust for brief dimensional measure of depression, anxiety and stress among children.
  13. Al-Kamali U, Zangana G, Al-Rawas M
    Cureus, 2024 Nov;16(11):e73816.
    PMID: 39687833 DOI: 10.7759/cureus.73816
    The United Kingdom, particularly Scotland, is a key destination for international medical graduates (IMGs), who now make up a substantial part of the National Health Service (NHS) workforce. These IMGs encounter several challenges when integrating into the NHS, with language barriers being especially significant. Although many IMGs are educated in English, they frequently struggle with the intricacies of Scottish languages and dialects, which are vital for good patient care. This review examines Scotland's linguistic environment, focusing on the roles of Gaelic and Scots languages in cultural distinctiveness and patient communication. By means of a literature review and focus group interviews with IMGs, the authors ascertained commonly utilised Scottish colloquialisms and their connotations, highlighting their importance in clinical contexts. The findings indicate that comprehending such colloquialisms can greatly improve doctor-patient communication, decrease misunderstandings, and enhance health outcomes. The article advocates for the formulation of formal training programs to better equip IMGs for the linguistic challenges they will encounter, thus improving their assimilation into the NHS and enhancing patient care. While the Scottish Government's efforts to support international recruitment and workforce assimilation have been exemplary, there remains a pressing need for targeted language orientation to close the communication gap and warrant high-quality healthcare delivery.
  14. Johansyah MD, Sambas A, Zheng S, Qureshi S, Abed-Elhameed TM, Vaidyanathan S
    Heliyon, 2024 Aug 15;10(15):e34703.
    PMID: 39687899 DOI: 10.1016/j.heliyon.2024.e34703
    Supply Chain Management (SCM) is a critical business function that involves the planning, coordination, and control of the flow of goods, information, and finances as they move from the manufacturer to the wholesaler to the retailer and finally to the end customer. SCM is a holistic approach to managing the entire process of delivering products or services to consumers. In this study, we will enhance the findings as outlined in Anne et al. (2009). While certain attributes of these systems will have been investigated, numerous aspects of these systems will still require further scrutiny. This calls for additional research studies on these systems. This paper examines a Fractional-Order Supply Chain Management (FOSCM) model utilizing the Adomian Decomposition Method (ADM) and explores qualitative aspects through an approach that addresses existence and uniqueness. By using Arzelà-Ascoli's principle, this system proves that the Caputo FOSCM model has at least one solution. Furthermore, we investigate the dynamics of the system by using the Lyapunov Exponent (LE), Bifurcation Diagram (BD), Complexity Analysis (CA) and 0-1 test. Finally, we introduce the control for FOSCM model using the Linear Feedback Control (LFC) method. We verify the correctness of our analysis by using numerical simulations.
  15. Afzal S, Wu YS, Manap ASA, Attiq A, Albokhadaim I, Appalaraju V, et al.
    Indian J Pharmacol, 2024 Sep 01;56(5):329-334.
    PMID: 39687956 DOI: 10.4103/ijp.ijp_564_24
    BACKGROUND: Sansevieria trifasciata, common name, mother-in-law's tongue, is a member of the Agavaceae family. We undertook this study to evaluate the cytotoxicity of S. trifasciata leaf extract against two cancer cell lines as well as its antibacterial activities against six bacterial strains.

    MATERIALS AND METHODS: The investigated cell lines include primary colon epithelial (PCE) cells and human colorectal cancer cells; the studied bacterial strains are Staphylococcus aureus, Proteus vulgaris, Bacillus subtilis, Klebsiella pneumoniae, Pseudomonas aeruginosa, and Escherichia coli. Using the agar well-diffusion method, various doses (5, 10, and 20 mg/mL) of plant extracts (ethanol and petroleum ether) were evaluated against each kind of bacterial strain. The minimal inhibitory doses were found using the two-fold serial dilution approach, with a range of 0.156-5 mg/mL.

    RESULTS: Comparing extracts of S. trifasciata leaves to tetracycline (0.05 mg/mL), a common antibiotic, revealed a wide range of antibacterial activity. P. vulgaris and S. aureus were the most sensitive bacterial strains to ethanol and petroleum ether extracts, respectively. The MTT test was employed to ascertain the viable cell count of PCE cells and HCT-116. When various ethanol extract concentrations (7.8, 15.63, 31.25, 62.5, 125, 250, 500, and 1000 μg/mL) were tested against the cell lines, HCT-116's IC50, values were lower as compared to PCE. The IC50 values for HCT-116 and PCE cells ranged from 10.0 to 14.07 μg/mL and 92.9-216.9 μg/mL, respectively.

    CONCLUSIONS: Ethanolic extract of S. trifasciata showed promising antibacterial and anticancer properties.

    MeSH terms: Ethanol/chemistry; Cell Survival/drug effects; Dose-Response Relationship, Drug; Humans; Microbial Sensitivity Tests*; HCT116 Cells; Cell Line, Tumor
  16. Jiang X, Nik Nabil WN, Ze Y, Dai R, Xi Z, Xu H
    Phytother Res, 2024 Dec 17.
    PMID: 39688127 DOI: 10.1002/ptr.8407
    Natural compound-derived chemotherapies remain central to cancer treatment, however, they often cause off-target side effects that negatively impact patients' quality of life. In contrast, antibody-drug conjugates (ADCs) combine cytotoxic payloads with antibodies to specifically target cancer cells. Most approved and clinically investigated ADCs utilize naturally derived payloads, while those with conventional synthetic molecular payloads remain limited. This review focuses on approved ADCs that enhance the efficacy of naturally derived payloads by linking them with antibodies. We provide an overview of the core components of ADCs, their working mechanisms, and FDA-approved ADCs featuring naturally derived payloads, such as calicheamicin, camptothecin, dolastatin 10, maytansine, pyrrolbenzodiazepine (PBD), and the immunotoxin Pseudomonas exotoxin A. This review also explores recent clinical advancements aimed at broadening the therapeutic potential of ADCs, their applicability in treating heterogeneously composed tumors and their potential use beyond oncology. Additionally, this review highlights naturally derived payloads that are currently being clinically investigated but have not yet received approval. By summarizing the current landscape, this review provides insights into promising avenues for exploration and contributes to the refinement of treatment protocols for improved patient outcomes.
  17. Khazaal Kadhim Almansoori A, Reddy NS, Abdulfattah M, Ismail SS, Abdul Rahim R
    PLoS One, 2024;19(12):e0314556.
    PMID: 39689112 DOI: 10.1371/journal.pone.0314556
    This study focuses on a novel lipase from Bacillus licheniformis IBRL-CHS2. The lipase gene was cloned into the pGEM-T Easy vector, and its sequences were registered in GenBank (KU984433 and AOT80658). It was identified as a member of the bacterial lipase subfamily 1.4. The pCold I vector and E. coli BL21 (DE3) host were utilized for expression, with the best results obtained by removing the enzyme's signal peptide. Optimal conditions were found to be 15°C for 24 h, using 0.2 mM Isopropyl β-D-1-thiogalactopyranoside (IPTG). The His-tagged lipase was purified 13-fold with a 68% recovery and a specific activity of 331.3 U/mg using affinity purification. The lipase demonstrated optimal activity at 35°C and pH 7. It remained stable after 24 h in 25% (v/v) organic solvents such as isooctane, n-hexane, dimethyl sulfoxide (DMSO), and methanol, which enhanced its activity. Chloroform and diethyl ether inhibited the lipase. The enzyme exhibited the highest affinity for p-nitrophenol laurate (C12:0) with a Km of 0.36 mM and a Vmax of 357 μmol min-1 mg-1. Among natural oils, it performed best with coconut oil and worst with olive oil. The lipase was stable in the presence of 1 mM and 5 mM Ca2⁺, K⁺, Na⁺, Mg2⁺, and Ba2⁺, but its activity decreased with Zn2⁺ and Al3⁺. Non-ionic surfactants like Triton X-100, Nonidet P40, Tween 20, and Tween 40 boosted activity, while Sodium Dodecyl Sulfate (SDS) inhibited it. This lipase's unique properties, particularly its stability in organic solvents, make it suitable for applications in organic synthesis and various industries.
    MeSH terms: Amino Acid Sequence; Bacterial Proteins/genetics; Bacterial Proteins/metabolism; Bacterial Proteins/chemistry; Cloning, Molecular*; Enzyme Stability; Escherichia coli/genetics; Hydrogen-Ion Concentration; Kinetics; Recombinant Proteins/genetics; Recombinant Proteins/isolation & purification; Recombinant Proteins/metabolism; Recombinant Proteins/chemistry; Substrate Specificity; Temperature
  18. Binti Adnan NAA, Kalam N, Lim Zi Jiunn G, Komarasamy TV, Balasubramaniam VRMT
    Am J Trop Med Hyg, 2024 Dec 17.
    PMID: 39689362 DOI: 10.4269/ajtmh.23-0819
    Chikungunya virus (CHIKV), prevalent in tropical regions, is known for causing frequent outbreaks, particularly in Central Africa, South America, and Southeast Asia. It is an arbovirus transmitted by the Aedes (Ae.) aegypti and Ae. albopictus mosquitoes. Infections lead to severe joint and muscle pain, which can linger and significantly impair an individual's health, quality of life, and economic stability. Recent climatic changes and the globalization of travel have facilitated the worldwide spread of these mosquitoes. Currently, no U.S. Food and Drug Administration (FDA) approved drug is available for treating CHIKV infection. Recently, the FDA approved a live, attenuated vaccine called Ixchiq. However, this vaccine has been linked to side effects, leading the FDA to mandate additional post-marketing studies to assess the risk of severe adverse reactions similar to the virus. An emerging strategy in drug development focuses on targeting host factors that the virus exploits rather than the viral proteins themselves. This review explores the interactions between CHIKV and host factors that could be potential therapeutic targets. Despite progress in understanding the life cycle of CHIKV, the immune system's role in combating the virus still needs to be fully understood. Investigating treatments that enhance the host's immune response may offer new paths to combating CHIKV.
  19. Mathialagan S, Lau PL
    J Obes Metab Syndr, 2024 Dec 30;33(4):314-325.
    PMID: 39689897 DOI: 10.7570/jomes24033
    Weightism, also known as weight-related discrimination, is pervasive and believed to be one of the socially accepted types of discrimination in Asia. Weightism is pervasive, impactful, and has significant repercussions on individuals grappling with excess weight. Despite being a major risk factor for obesity, excess weight is not well documented in the Asian literature. This narrative review explores compelling evidence indicating that weightism adversely affects both physical and psychological well-being across various aspects of life. Research findings suggest that weightism be deemed socially unacceptable in Asia to mitigate the obesity epidemic and enhance overall well-being. Consequently, several recommendations for reducing weight stigma in Asian culture are proposed to support a healthier future.
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