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Author

Samar Binkheder

Bio: Samar Binkheder is an academic researcher from King Saud University. The author has contributed to research in topics: Health informatics & Biomedical text mining. The author has an hindex of 2, co-authored 9 publications receiving 20 citations. Previous affiliations of Samar Binkheder include Indiana University – Purdue University Indianapolis.

Papers
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Journal ArticleDOI
01 Feb 2018
TL;DR: A comprehensive overview of translational biomedical informatics methodologies with related databases is provided in this article, which illustrates the complementary nature of these informatic approaches and facilitates the translational drug interaction research.
Abstract: Drug interaction is a leading cause of adverse drug events and a major obstacle for current clinical practice. Pharmacovigilance data mining, pharmacokinetic modeling, and text mining are computation and informatic tools on integrating drug interaction knowledge and generating drug interaction hypothesis. We provide a comprehensive overview of these translational biomedical informatics methodologies with related databases. We hope this review illustrates the complementary nature of these informatic approaches and facilitates the translational drug interaction research.

14 citations

01 Jan 2018
TL;DR: This review provides a comprehensive overview of Pharmacovigilance data mining, pharmacokinetic modeling, and text mining with related databases and hopes this review illustrates the complementary nature of these informatic approaches and facilitates the translational drug interaction research.
Abstract: Drug interaction is a leading cause of adverse drug events and a major obstacle for current clinical practice. Pharmacovigilance data mining, pharmacokinetic modeling, and text mining are computation and informatic tools on integrating drug interaction knowledge and generating drug interaction hypothesis. We provide a comprehensive overview of these translational biomedical informatics methodologies with related databases. We hope this review illustrates the complementary nature of these informatic approaches and facilitates the translational drug interaction research.

14 citations

Journal ArticleDOI
TL;DR: In this paper, the authors evaluated the usability of the user interface design of telemedicine apps deployed during the COVID-19 pandemic in Saudi Arabia and explored changes to the apps' usability based on the pandemic timeline.

7 citations

Journal ArticleDOI
TL;DR: In this paper, the authors assessed the stress and burnout related to the use of EHRs and health information technology (HIT) tools among HCPs during COVID-19 in Saudi Arabia.

3 citations

Journal ArticleDOI
TL;DR: In this article, the quality of COVID-19 patients' records and their readiness for secondary use was evaluated using ICD-10 codes and case definition guidelines, and the accuracy of the COVID19 case identification was higher in laboratory tests than in ICD10 codes.

2 citations


Cited by
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Journal ArticleDOI
TL;DR: A review of recent work in mining social media for biomedical, epidemiological, and social phenomena information relevant to the multilevel complexity of human health can be found in this paper.
Abstract: Social media data have been increasingly used to study biomedical and health-related phenomena. From cohort-level discussions of a condition to population-level analyses of sentiment, social media have provided scientists with unprecedented amounts of data to study human behavior associated with a variety of health conditions and medical treatments. Here we review recent work in mining social media for biomedical, epidemiological, and social phenomena information relevant to the multilevel complexity of human health. We pay particular attention to topics where social media data analysis has shown the most progress, including pharmacovigilance and sentiment analysis, especially for mental health. We also discuss a variety of innovative uses of social media data for health-related applications as well as important limitations of social media data access and use.

42 citations

Journal ArticleDOI
TL;DR: A comprehensive review of state-of-the-art computational methods falling into three categories: literature-based extraction methods, machine learning-based prediction methods and pharmacovigilance-based data mining methods is presented in this article .
Abstract: The detection of drug-drug interactions (DDIs) is a crucial task for drug safety surveillance, which provides effective and safe co-prescriptions of multiple drugs. Since laboratory researches are often complicated, costly and time-consuming, it's urgent to develop computational approaches to detect drug-drug interactions. In this paper, we conduct a comprehensive review of state-of-the-art computational methods falling into three categories: literature-based extraction methods, machine learning-based prediction methods and pharmacovigilance-based data mining methods. Literature-based extraction methods detect DDIs from published literature using natural language processing techniques; machine learning-based prediction methods build prediction models based on the known DDIs in databases and predict novel ones; pharmacovigilance-based data mining methods usually apply statistical techniques on various electronic data to detect drug-drug interaction signals. We first present the taxonomy of drug-drug interaction detection methods and provide the outlines of three categories of methods. Afterwards, we respectively introduce research backgrounds and data sources of three categories, and illustrate their representative approaches as well as evaluation metrics. Finally, we discuss the current challenges of existing methods and highlight potential opportunities for future directions.

18 citations

Journal ArticleDOI
TL;DR: An efficient approach to estimate the directional effects of high-order DDIs through frequent itemset mining is proposed, and a novel visualization method to organize and present the high- order directional DDI effects involving more than three drugs in an interactive, concise and comprehensive manner is developed.
Abstract: Adverse drug events (ADEs) often occur as a result of drug-drug interactions (DDIs). The use of data mining for detecting effects of drug combinations on ADE has attracted growing attention and interest, however, most studies focused on analyzing pairwise DDIs. Recent efforts have been made to explore the directional relationships among high-dimensional drug combinations and have shown effectiveness on prediction of ADE risk. However, the existing approaches become inefficient from both computational and illustrative perspectives when considering more than three drugs. We proposed an efficient approach to estimate the directional effects of high-order DDIs through frequent itemset mining, and further developed a novel visualization method to organize and present the high-order directional DDI effects involving more than three drugs in an interactive, concise and comprehensive manner. We demonstrated its performance by mining the directional DDIs associated with myopathy using a publicly available FAERS dataset. Directional effects of DDIs involving up to seven drugs were reported. Our analysis confirmed previously reported myopathy associated DDIs including interactions between fusidic acid with simvastatin and atorvastatin. Furthermore, we uncovered a number of novel DDIs leading to increased risk for myopathy, such as the co-administration of zoledronate with different types of drugs including antibiotics (ciprofloxacin, levofloxacin) and analgesics (acetaminophen, fentanyl, gabapentin, oxycodone). Finally, we visualized directional DDI findings via the proposed tool, which allows one to interactively select any drug combination as the baseline and zoom in/out to obtain both detailed and overall picture of interested drugs. We developed a more efficient data mining strategy to identify high-order directional DDIs, and designed a scalable tool to visualize high-order DDI findings. The proposed method and tool have the potential to contribute to the drug interaction research and ultimately impact patient health care. http://lishenlab.com/d3i/explorer.html

14 citations

Journal ArticleDOI
TL;DR: The use of telehealth was perceived as being positive as well as valuable and confidential in monitoring and providing care, however, challenges such as the lack of time or a busy schedule impeded the use oftelehealth among HCPs in Saudi Arabia.

7 citations