Laiba Husain | AI in Healthcare | Best Researcher Award

Dr. Laiba Husain | AI in Healthcare | Best Researcher Award

Early Impact Scholar at University of Texas Southwestern Medical Center | United States

Dr. Laiba Husain is a distinguished public health researcher specializing in translational health sciences and primary care. Her academic journey reflects an exceptional commitment to advancing healthcare equity, particularly in digital health and marginalized communities. Currently serving as an Early Impact Scholar at the Peter O’Donnell School of Public Health, UT Southwestern Medical Center, she integrates multidisciplinary approaches to address pressing healthcare challenges. Her expertise spans qualitative and mixed-methods research, stakeholder engagement, and health policy development. Through impactful collaborations across leading institutions, Dr. Husain has contributed to groundbreaking studies that influence both clinical practice and healthcare delivery worldwide.

Profile:

Scopus | Orcid

Education:

Dr. Husain’s academic foundation began with a Bachelor of Science in Biopsychology, Cognition, and Neuroscience from the University of Michigan , where she was recognized as a James B. Angell Scholar. As a Fulbright Scholar, she earned her Master of Public Health from the University of Birmingham, gaining international perspectives on health systems. she completed her Doctor of Philosophy in Translational Health Sciences at the University of Oxford under Dr. Trish Greenhalgh’s supervision. Her doctoral work focused on health disparities in digital care delivery, merging rigorous methodology with real-world application to inform evidence-based interventions.

Experience:

Dr. Husain’s career includes progressive roles at globally renowned institutions. she was a Research Associate at the University of Oxford, contributing to EU-wide healthcare initiatives.  she worked as a Research Analyst in the Nuffield Department of Primary Care Health Sciences, enhancing methodological rigor across diverse projects. Concurrently, she served as a consultant with The Healthcare Improvement Studies Institute at the University of Cambridge, advising on healthcare improvement strategies. she has advanced public health research at UT Southwestern, with a focus on tele-oncology and regional healthcare partnerships.

Research Interests:

Dr. Husain’s research interests converge on healthcare equity, digital health disparities, and patient-centered care. She investigates how intersecting disadvantages such as socioeconomic status, language barriers, and age affect access to digital healthcare solutions. Her work employs qualitative and mixed-methods approaches to capture nuanced patient experiences and inform inclusive policy frameworks. She is particularly engaged in developing practical tools, such as user personas, to address barriers in digital consultations for marginalized populations. Additionally, her studies explore the integration of telehealth in primary care and public health, aiming to improve system responsiveness, accessibility, and cultural competence in healthcare delivery.

Awards and Honors:

Dr. Husain’s contributions have been recognized through numerous honors. These include the James B. Angell Scholar Award  for academic excellence, the prestigious Fulbright Scholar Award and the Dean’s University Scholar Award from Oxford . She received a Doctoral Fellowship Award from The Health Improvements Studies Institute  and  honored in the International Women of Impact Portrait Series at Green Templeton College. Most recently, she earned the Nuffield Departmental Award for Outstanding Doctoral Dissertation, highlighting her innovative contributions to translational health sciences and the field’s understanding of digital health disparities.

Publications:

Title: Management of post-acute covid-19 in primary care

Citation: 102

year of Publications: 2020

Title:  Long Covid – the illness narratives

Citation: 65

year of Publications: 2021

Title: I can’t cope with multiple inputs a qualitative study of the lived experience of brain fog after COVID-19

Citation: 45

year of Publications: 2022

Title: Desperately seeking intersectionality in digital health disparity research: narrative review to inform a richer theorization of multiple disadvantage

Citation: 30

year of Publications: 2022

Title: Safety implications of remote assessments for suspected COVID-19 qualitative study in UK primary care

Citation: 20

year of Publications: 2023

Title: Developing user personas to capture intersecting dimensions of disadvantage in older patients who are marginalised: a qualitative studyprimary care

Citation: 12

year of Publications: 2024

Title: Examining Intersectionality and Barriers to the Uptake of Video Consultations Among Older Adults From Disadvantaged Backgrounds With Limited English Proficiency: Qualitative Narrative Interview Study

Citation: 1

year of Publications: 2025

Conclusion:

Dr. Laiba Husain exemplifies the synthesis of academic excellence, research innovation, and real-world healthcare impact. Her interdisciplinary approach bridges gaps between patient experiences, digital health innovation, and public health policy. By fostering collaborations among clinicians, policymakers, and community stakeholders, she has advanced evidence-based solutions addressing complex health inequalities. Her scholarly work not only deepens theoretical understanding but also delivers tangible benefits to underserved populations. With a trajectory marked by high-impact research, leadership in healthcare initiatives, and dedication to mentorship, Dr. Husain stands as an influential figure driving the future of equitable and effective healthcare delivery.

Ali Ghulam | AI in Healthcare | Best Researcher Award

Dr. Ali Ghulam | AI in Healthcare | Best Researcher Award

Assistant Professor at Information Technology Centre, Sindh Agriculture University, Pakistan

Dr. Ghulam Ali is an accomplished academic and researcher specializing in artificial intelligence (AI) and bioinformatics. He earned his Ph.D. in Computer Software and Theory from Shaanxi Normal University, Xi’an, China, in 2020. Currently, he serves as an Assistant Professor at the Information Technology Centre, Sindh Agriculture University, Tandojam. His research focuses on human disease pathway network modeling, biological pathway database discovery, and AI-driven predictions related to proteins, drugs, and diseases. With over 20 published SCI articles in high-impact journals and extensive contributions to machine learning applications in bioinformatics, Dr. Ali is a recognized expert in his field.

Profile

Orcid

Education

Dr. Ali pursued his Ph.D. from Shaanxi Normal University, Xi’an, China, specializing in bioinformatics and AI. His thesis, titled “Prediction of Pathway Related Protein, Drug and Disease Association Based on Complex Network and Deep Learning,” was supervised by Prof. Xiujuan Lei. He completed his M.Phil. in Computer Science with a specialization in Search Engine Optimization from the University of Sindh, Jamshoro. His academic journey began with a Bachelor of Computer Science (BCS-Hons) from the same university. Additionally, he obtained various certifications and diplomas in information technology, further strengthening his expertise in computing and AI.

Experience

Dr. Ali has a strong academic and research background, currently holding the position of Assistant Professor at Sindh Agriculture University, Tandojam. His professional journey includes extensive work on bioinformatics, AI-based predictive models, and computational biology. He has contributed significantly to research in AI applications for human protein sequence analysis, disease detection, and biomedical data transformation. With a deep understanding of AI, deep learning, and machine learning techniques, he has played a pivotal role in advancing bioinformatics research and education.

Research Interests

Dr. Ali’s research primarily revolves around bioinformatics and artificial intelligence. He is particularly focused on human disease pathway modeling, drug-protein interaction prediction, and machine learning applications in genomics. His work involves utilizing AI to enhance precision diagnostics, early-stage disease detection, and advanced biomedical data analysis. By leveraging deep learning and AI-driven methodologies, Dr. Ali aims to improve healthcare analytics and disease treatment strategies. His research has practical implications in the fields of computational biology, digital health frameworks, and AI-driven medical solutions.

Awards and Recognitions

Dr. Ali has received numerous accolades for his contributions to AI and bioinformatics research. His high-impact factor publications and citations reflect his significant contributions to the scientific community. With an H-index of 12 on Google Scholar, an i10-index of 18, and a ResearchGate H-index of 11, his research has been widely recognized and cited. He has also been nominated for various research excellence awards, highlighting his influence in the field of computational biology and AI-driven biomedical advancements.

Publications

Ali, Ghulam, et al. (2025). “StackAHTPs: An explainable antihypertensive peptides identifier based on heterogeneous features and stacked learning approach.” IET Systems Biology, 19(1), e70002. (SCI, IF: 1.9, Cited by: X).

Arif, Muhammad, et al. (2024). “StackDPPred: Multiclass prediction of defensin peptides using stacked ensemble learning with optimized features.” Methods, 230, 129-139. (SCI, IF: 4.02, Cited by: X).

Arif, Muhammad, et al. (2024). “DPI_CDF: Druggable protein identifier using cascade deep forest.” BMC Bioinformatics, 25(1), 1-18. (SCI, IF: 3.09, Cited by: X).

Talpur, Fauzia, et al. (2024). “ML-Based Detection of DDoS Attacks Using Evolutionary Algorithms Optimization.” Sensors, 24(5), 1672. (SCI, IF: 3.09, Cited by: X).

Ghulam, Ali, et al. (2024). “Assessment of Performance of Machine Learning Classification Techniques for Monkey Pox Disease Detection.” Journal of Innovative Intelligent Computing and Emerging Technologies, 1(1), 1-7. (Cited by: X).

Memon, Mukhtiar, et al. (2023). “AiDHealth: An AI-enabled Digital Health Framework for Connected Health and Personal Health Monitoring.” (Cited by: X).

Sikander, Rahu, et al. (2023). “Identification of cancerlectin proteins using hyperparameter optimization in deep learning and DDE profiles.” Mehran University Research Journal of Engineering & Technology, 42(4), 28-40. (WoS, Cited by: X).

Conclusion

Dr. Ghulam Ali is a distinguished researcher and academician in the field of artificial intelligence and bioinformatics. His contributions to AI-driven biomedical research, particularly in disease pathway modeling and predictive analytics, have significantly advanced the field. With a strong publication record, multiple citations, and a commitment to innovation, he continues to influence computational biology and digital health research. His work bridges the gap between AI and medical sciences, paving the way for future breakthroughs in bioinformatics and AI-driven healthcare solutions.