Background: With the development of artificial intelligence (AI), medicine has entered the era of intelligent medicine, and various aspects, such as medical education and talent cultivation, are also being redefined. The cultivation of clinical thinking abilities poses a formidable challenge even for seasoned clinical educators, as offline training modalities often fall short in bridging the divide between current practice and the desired ideal. Consequently, there arises an imperative need for the expeditious development of a web-based database, tailored to empower physicians in their quest to learn and hone their clinical reasoning skills.
Objective: This study aimed to introduce an app named "XueYiKu," which includes consultations, physical examinations, auxiliary examinations, and diagnosis, incorporating AI and actual complete hospital medical records to build an online-learning platform using human-computer interaction.
Methods: The "XueYiKu" app was designed as a contactless, self-service, trial-and-error system application based on actual complete hospital medical records and natural language processing technology to comprehensively assess the "clinical competence" of residents at different stages. Case extraction was performed at a hospital's case data center, and the best-matching cases were differentiated through natural language processing, word segmentation, synonym conversion, and sorting. More than 400 teaching cases covering 65 kinds of diseases were released for students to learn, and the subjects covered internal medicine, surgery, gynecology and obstetrics, and pediatrics. The difficulty of learning cases was divided into four levels in ascending order. Moreover, the learning and teaching effects were evaluated using 6 dimensions covering systematicness, agility, logic, knowledge expansion, multidimensional evaluation indicators, and preciseness.
Results: From the app's first launch on the Android platform in May 2019 to the last version updated in May 2023, the total number of teacher and student users was 6209 and 1180, respectively. The top 3 subjects most frequently learned were respirology (n=606, 24.1%), general surgery (n=506, 20.1%), and urinary surgery (n=390, 15.5%). For diseases, pneumonia was the most frequently learned, followed by cholecystolithiasis (n=216, 14.1%), benign prostate hyperplasia (n=196, 12.8%), and bladder tumor (n=193, 12.6%). Among 479 students, roughly a third (n=168, 35.1%) scored in the 60 to 80 range, and half of them scored over 80 points (n=238, 49.7%). The app enabled medical students' learning to become more active and self-motivated, with a variety of formats, and provided real-time feedback through assessments on the platform. The learning effect was satisfactory overall and provided important precedence for establishing scientific models and methods for assessing clinical thinking skills in the future.
Conclusions: The integration of AI and medical education will undoubtedly assist in the restructuring of education processes; promote the evolution of the education ecosystem; and provide new convenient ways for independent learning, interactive communication, and educational resource sharing.
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http://dx.doi.org/10.2196/58426 | DOI Listing |
Alzheimers Dement
December 2024
Mayo Clinic, Rochester, MN, USA.
Background: Discussion surrounding the nomenclature of the "nonfluent/agrammatic" spectrum of progressive speech-language disorders has largely focused on the clinical-pathological and neuroimaging correlations, with some attention paid to the prognostication afforded by differentiating clinical phenotypes. Progressive apraxia of speech (AOS), with or without agrammatic aphasia, is generally associated with an underlying tauopathy; however, patients have offered a unique perspective on the importance of distinguishing between difficulties with speech and language that extends beyond pathological specificity. This study aimed to provide insight into the experience of patients with primary progressive AOS (PPAOS), with particular attention to their diagnostic journey.
View Article and Find Full Text PDFAlzheimers Dement
December 2024
Instituto Nacional de Ciencias Médicas y Nutrición Salvador Zubirán, México, DF, Mexico.
Background: The World Health Organization forecasts a population of 2,000 million people over 60 years by the year 2050, with 7% of this population suffering from dementia. Making a constant clinical-technological evaluation of older adults allows early detection of the disease and provides a better quality of life for the patient. In this sense, the research and development of innovative technological systems for the early detection of the disease, its monitoring and management of the growing number of patients with cognitive diseases has increased in recent years, integrating data collection and its automatic processing based on geriatric metrics into these systems using artificial intelligence (AI) methods.
View Article and Find Full Text PDFAlzheimers Dement
December 2024
UMass Chan Medical School, Worcester, MA, USA.
Background: The deficit of unawareness of cognitive impairment (cognitive anosognosia) is known to be associated with adverse health outcomes, caregiver burden, and worse cognitive outcomes. A better understanding of cognitive self-awareness and the ability to self-judge cognitive performance among the general population would enable a rational design of cognitive screening and improve how subjective cognitive decline and self-reported errors at tasks like medication administration are interpreted.
Method: Participants were enrolled in the Framingham Heart Study, which is a community-based cohort with three generations of participants.
Alzheimers Dement
December 2024
New York University, New York, NY, USA.
Background: Studies show that tube feeding does not improve clinical outcomes, and professional guidelines recommend against its use for individuals with advanced dementia. Yet, our preliminary work demonstrates a preference for tube feeding among Chinese-American dementia caregivers. We propose linguistic and cultural adaptation of "Making Choices: Feeding Options for Patients with Dementia (MCFODA) to create the Chinese version of this efficacious decision aid intervention.
View Article and Find Full Text PDFAlzheimers Dement
December 2024
Oregon Health & Science University, Portland, OR, USA.
Background: Persons with cognitive impairment may experience difficulties with language and cognition that interfere with their ability to make and communicate decisions. We developed an online visual tool to facilitate conversations about their preferences concerning supportive care.
Methods: We conducted Zoom interviews with persons with mild cognitive impairment (MCI) and mild to moderate dementia, using storytelling and a virtual tool designed to facilitate discussion.
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