journal
https://read.qxmd.com/read/38367119/transformer-models-in-healthcare-a-survey-and-thematic-analysis-of-potentials-shortcomings-and-risks
#21
REVIEW
Kerstin Denecke, Richard May, Octavio Rivera-Romero
Large Language Models (LLMs) such as General Pretrained Transformer (GPT) and Bidirectional Encoder Representations from Transformers (BERT), which use transformer model architectures, have significantly advanced artificial intelligence and natural language processing. Recognized for their ability to capture associative relationships between words based on shared context, these models are poised to transform healthcare by improving diagnostic accuracy, tailoring treatment plans, and predicting patient outcomes...
February 17, 2024: Journal of Medical Systems
https://read.qxmd.com/read/38366043/the-breakthrough-of-large-language-models-release-for-medical-applications-1-year-timeline-and-perspectives
#22
REVIEW
Marco Cascella, Federico Semeraro, Jonathan Montomoli, Valentina Bellini, Ornella Piazza, Elena Bignami
Within the domain of Natural Language Processing (NLP), Large Language Models (LLMs) represent sophisticated models engineered to comprehend, generate, and manipulate text resembling human language on an extensive scale. They are transformer-based deep learning architectures, obtained through the scaling of model size, pretraining of corpora, and computational resources. The potential healthcare applications of these models primarily involve chatbots and interaction systems for clinical documentation management, and medical literature summarization (Biomedical NLP)...
February 17, 2024: Journal of Medical Systems
https://read.qxmd.com/read/38358554/text-mining-and-video-analytics-of-covid-19-narratives-shared-by-patients-on-youtube
#23
JOURNAL ARTICLE
Ranganathan Chandrasekaran, Karthik Konaraddi, Sakshi S Sharma, Evangelos Moustakas
This study explores how individuals who have experienced COVID-19 share their stories on YouTube, focusing on the nature of information disclosure, public engagement, and emotional impact pertaining to consumer health. Using a dataset of 186 YouTube videos, we used text mining and video analytics techniques to analyze textual transcripts and visual frames to identify themes, emotions, and their relationship with viewer engagement metrics. Findings reveal eight key themes: infection origins, symptoms, treatment, mental well-being, isolation, prevention, government directives, and vaccination...
February 15, 2024: Journal of Medical Systems
https://read.qxmd.com/read/38353872/an-mhealth-application-in-german-health-care-system-importance-of-user-participation-in-the-development-process
#24
JOURNAL ARTICLE
Peter Bickmann, Ingo Froböse, Christopher Grieben
This paper addresses the challenges and solutions in developing a holistic prevention mobile health application (mHealth app) for Germany's healthcare sector. Despite Germany's lag in healthcare digitalization, the app aims to enhance primary prevention in physical activity, nutrition, and stress management. A significant focus is on user participation and usability to counter the prevalent issue of user attrition in mHealth applications, as described by Eysenbach's 'law of attrition'. The development process, conducted in a scientific and university context, faces constraints like limited budgets and external service providers...
February 14, 2024: Journal of Medical Systems
https://read.qxmd.com/read/38353755/artificial-intelligence-in-operating-room-management
#25
REVIEW
Valentina Bellini, Michele Russo, Tania Domenichetti, Matteo Panizzi, Simone Allai, Elena Giovanna Bignami
This systematic review examines the recent use of artificial intelligence, particularly machine learning, in the management of operating rooms. A total of 22 selected studies from February 2019 to September 2023 are analyzed. The review emphasizes the significant impact of AI on predicting surgical case durations, optimizing post-anesthesia care unit resource allocation, and detecting surgical case cancellations. Machine learning algorithms such as XGBoost, random forest, and neural networks have demonstrated their effectiveness in improving prediction accuracy and resource utilization...
February 14, 2024: Journal of Medical Systems
https://read.qxmd.com/read/38329594/measuring-the-coverage-of-the-hl7%C3%A2-fhir%C3%A2-standard-in-supporting-data-acquisition-for-3-public-health-registries
#26
JOURNAL ARTICLE
Manju Bikkanuri, Taiquitha T Robins, Lori Wong, Emel Seker, Melody L Greer, Tremaine B Williams, Maryam Y Garza
With the increasing need for timely submission of data to state and national public health registries, current manual approaches to data acquisition and submission are insufficient. In clinical practice, federal regulations are now mandating the use of data messaging standards, i.e., the Health Level Seven (HL7® ) Fast Healthcare Interoperability Resources (FHIR® ) standard, to facilitate the electronic exchange of clinical (patient) data. In both research and public health practice, we can also leverage FHIR® ‒ and the infrastructure already in place for supporting exchange of clinical practice data ‒ to enable seamless exchange between the electronic medical record and public health registries...
February 8, 2024: Journal of Medical Systems
https://read.qxmd.com/read/38305947/chatgpt-for-parents-of-children-seeking-emergency-care-so-much-hope-so-much-caution
#27
LETTER
Julie Yu, Clyde Matava
No abstract text is available yet for this article.
February 2, 2024: Journal of Medical Systems
https://read.qxmd.com/read/38289373/adoption-and-sustained-use-of-primary-care-video-visits-among-veterans-with-va-video-enabled-tablets
#28
JOURNAL ARTICLE
Zainub Dhanani, Jacqueline M Ferguson, James Van Campen, Cindie Slightam, Leonie Heyworth, Donna M Zulman
In 2020, the U.S. Department of Veterans Affairs (VA) expanded an initiative to distribute video-enabled tablets to Veterans with limited virtual care access. We examined patient characteristics associated with adoption and sustained use of video-based primary care among Veterans. We conducted a retrospective cohort study of Veterans who received VA-issued tablets between 3/11/2020-9/10/2020. We used generalized linear models to evaluate the sociodemographic and clinical factors associated with video-based primary care adoption (i...
January 30, 2024: Journal of Medical Systems
https://read.qxmd.com/read/38252192/multiple-classification-of-brain-mri-autism-spectrum-disorder-by-age-and-gender-using-deep-learning
#29
JOURNAL ARTICLE
Hidir Selcuk Nogay, Hojjat Adeli
The fact that the rapid and definitive diagnosis of autism cannot be made today and that autism cannot be treated provides an impetus to look into novel technological solutions. To contribute to the resolution of this problem through multiple classifications by considering age and gender factors, in this study, two quadruple and one octal classifications were performed using a deep learning (DL) approach. Gender in one of the four classifications and age groups in the other were considered. In the octal classification, classes were created considering gender and age groups...
January 22, 2024: Journal of Medical Systems
https://read.qxmd.com/read/38227131/automated-prediction-of-photographic-wound-assessment-tool-in-chronic-wound-images
#30
JOURNAL ARTICLE
Nico Curti, Yuri Merli, Corrado Zengarini, Michela Starace, Luca Rapparini, Emanuela Marcelli, Gianluca Carlini, Daniele Buschi, Gastone C Castellani, Bianca Maria Piraccini, Tommaso Bianchi, Enrico Giampieri
Many automated approaches have been proposed in literature to quantify clinically relevant wound features based on image processing analysis, aiming at removing human subjectivity and accelerate clinical practice. In this work we present a fully automated image processing pipeline leveraging deep learning and a large wound segmentation dataset to perform wound detection and following prediction of the Photographic Wound Assessment Tool (PWAT), automatizing the clinical judgement of the adequate wound healing...
January 16, 2024: Journal of Medical Systems
https://read.qxmd.com/read/38217829/artificial-intelligence-enabled-chest-x-ray-classifies-osteoporosis-and-identifies-mortality-risk
#31
JOURNAL ARTICLE
Dung-Jang Tsai, Chin Lin, Chin-Sheng Lin, Chia-Cheng Lee, Chih-Hung Wang, Wen-Hui Fang
A deep learning model was developed to identify osteoporosis from chest X-ray (CXR) features with high accuracy in internal and external validation. It has significant prognostic implications, identifying individuals at higher risk of all-cause mortality. This Artificial Intelligence (AI)-enabled CXR strategy may function as an early detection screening tool for osteoporosis. The aim of this study was to develop a deep learning model (DLM) to identify osteoporosis via CXR features and investigate the performance and clinical implications...
January 13, 2024: Journal of Medical Systems
https://read.qxmd.com/read/38217798/revolutionizing-the-teaching-of-ultrasound-guided-vascular-access-procedures-with-augmented-reality-headsets
#32
LETTER
Elizabeth Ternent-Rech, Thomas James Lockhart, Julia A Gálvez Delgado
No abstract text is available yet for this article.
January 13, 2024: Journal of Medical Systems
https://read.qxmd.com/read/38194118/population-based-cancer-prevention-education-intervention-through-mhealth-a-randomized-controlled-trial
#33
JOURNAL ARTICLE
Carolina Espina, Ariadna Feliu, Albert González Vingut, Theresa Liddle, Celia Jimenez-Garcia, Inmaculada Olaya-Caro, Luis Ángel Perula-De-Torres
Despite the high potential of mHealth-related educational interventions to reach large segments of the population, implementation and adoption of such interventions may be challenging. The objective of this study was to gather knowledge on the feasibility of a future cancer prevention education intervention based on the European Code Against Cancer (ECAC), using a population-based mHealth implementation strategy. A type-2 hybrid effectiveness-implementation study was conducted in a sample of the Spanish general population to assess adoption, fidelity, appropriateness, and acceptability of an intervention to disseminate cancer prevention messages, and willingness to consult further digital information...
January 9, 2024: Journal of Medical Systems
https://read.qxmd.com/read/38193948/optimizing-gene-selection-and-cancer-classification-with-hybrid-sine-cosine-and-cuckoo-search%C3%A2-algorithm
#34
JOURNAL ARTICLE
Abrar Yaqoob, Navneet Kumar Verma, Rabia Musheer Aziz
Gene expression datasets offer a wide range of information about various biological processes. However, it is difficult to find the important genes among the high-dimensional biological data due to the existence of redundant and unimportant ones. Numerous Feature Selection (FS) techniques have been created to get beyond this obstacle. Improving the efficacy and precision of FS methodologies is crucial in order to identify significant genes amongst complicated complex biological data. In this work, we present a novel approach to gene selection called the Sine Cosine and Cuckoo Search Algorithm (SCACSA)...
January 9, 2024: Journal of Medical Systems
https://read.qxmd.com/read/38193928/does-the-case-volume-experience-of-the-anesthesiologist-influence-the-intraoperative-efficiency-at-all
#35
LETTER
Jan Bruthans, Eric S Schwenk
This editorial discusses the recent study conducted by Macias et al., revealing that anesthesiologists' case volume history has only a marginal impact on improving operating room efficiency, resulting in minimal clinical significance. The idea that a specific anesthesia team or type of anesthesia could enhance productivity has been previously investigated, yielding similar conclusions. Although the study primarily focuses on the time from patient arrival to the completion of anesthesia induction, excluding the latter part of anesthesia-controlled time, Macias et al...
January 9, 2024: Journal of Medical Systems
https://read.qxmd.com/read/38165495/systematic-review-of-machine-learning-applied-to-the-secondary-prevention-of-ischemic-stroke
#36
REVIEW
Meng Chen, Dongbao Qian, Yixuan Wang, Junyan An, Ke Meng, Shuai Xu, Sheng Liu, Meiyan Sun, Miao Li, Chunying Pang
Ischemic stroke is a serious disease posing significant threats to human health and life, with the highest absolute and relative risks of a poor prognosis following the first occurrence, and more than 90% of strokes are attributable to modifiable risk factors. Currently, machine learning (ML) is widely used for the prediction of ischemic stroke outcomes. By identifying risk factors, predicting the risk of poor prognosis and thus developing personalized treatment plans, it effectively reduces the probability of poor prognosis, leading to more effective secondary prevention...
January 2, 2024: Journal of Medical Systems
https://read.qxmd.com/read/38157145/development-of-an-automated-and-scalable-virtual-assistant-to-aid-in-ppe-adherence-a-study-with-implications-for-applications-within-anesthesiology
#37
JOURNAL ARTICLE
Eric Plitman, Edward Kim, Rajesh Patel, Seema Kohout, Rongyu Jin, Vincent Chan, Michael Dinsmore
Virtual assistants (VAs) are conversational agents that are able to provide cognitive aid. We developed a VA device for donning and doffing personal protective equipment (PPE) procedures and compared it to live human coaching to explore the feasibility of using VAs in the anesthesiology setting. An automated, scalable, voice-enabled VA was built using the Amazon Alexa device and Alexa Skills application. The device utilized voice-recognition technology to allow a touch-free interactive user experience. Audio and video step-by-step instructions for proper donning and doffing of PPE were programmed and displayed on an Echo Show device...
December 29, 2023: Journal of Medical Systems
https://read.qxmd.com/read/38148352/the-application-of-computer-technology-to-clinical-practice-guideline-implementation-a-scoping-review
#38
REVIEW
Xu-Hui Li, Jian-Peng Liao, Mu-Kun Chen, Kuang Gao, Yong-Bo Wang, Si-Yu Yan, Qiao Huang, Yun-Yun Wang, Yue-Xian Shi, Wen-Bin Hu, Ying-Hui Jin
Implementation of clinical practice guidelines (CPG) is a complex and challenging task. Computer technology, including artificial intelligence (AI), has been explored to promote the CPG implementation. This study has reviewed the main domains where computer technology and AI has been applied to CPG implementation. PubMed, Embase, Web of science, the Cochrane Library, China National Knowledge Infrastructure database, WanFang DATA, VIP database, and China Biology Medicine disc database were searched from inception to December 2021...
December 27, 2023: Journal of Medical Systems
https://read.qxmd.com/read/38127210/dishonest-physician-reviews-challenging-physician-online-reviews-and-the-appeals-process
#39
JOURNAL ARTICLE
Ria Malhotra, Anika Reddy, Rohan Jotwani, Michael E Schatman, Neel D Mehta
Physician reviews influence how patients seek care, but dishonest reviews can be detrimental to a physician practice. It is unclear if reviews can be challenged, and processes differ and are not readily apparent. The objective of this observational study was to determine the ability to challenge dishonest negative reviews online. Commonly used websites for physician reviews as of August 2021 were utilized: Healthgrades, Vitals, RateMDs, Zocdoc, Yelp, and Google Business. Each review platform's website was tested for leaving a physician review and process of appeal and possible removal of a negative review...
December 21, 2023: Journal of Medical Systems
https://read.qxmd.com/read/38105364/use-of-artificial-intelligence-to-improve-the-calculation-of-percent-adhesion-for-transdermal-and-topical-delivery-systems
#40
JOURNAL ARTICLE
Chao Wang, Caroline Strasinger, Yu-Ting Weng, Xutong Zhao
Adhesion is a critical quality attribute and performance characteristic for transdermal and topical delivery systems (TDS). Regulatory agencies recommend in vivo skin adhesion studies to support the approval of TDS in both new drug applications and abbreviated new drug applications. The current assessment approach in such studies is based on the visual observation of the percent adhesion, defined as the ratio of the area of TDS attached to the skin to the total area of the TDS. Visually estimated percent adhesion by trained clinicians or trial participants creates variability and bias...
December 18, 2023: Journal of Medical Systems
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