- Home
- Medical news & Guidelines
- Anesthesiology
- Cardiology and CTVS
- Critical Care
- Dentistry
- Dermatology
- Diabetes and Endocrinology
- ENT
- Gastroenterology
- Medicine
- Nephrology
- Neurology
- Obstretics-Gynaecology
- Oncology
- Ophthalmology
- Orthopaedics
- Pediatrics-Neonatology
- Psychiatry
- Pulmonology
- Radiology
- Surgery
- Urology
- Laboratory Medicine
- Diet
- Nursing
- Paramedical
- Physiotherapy
- Health news
- Fact Check
- Bone Health Fact Check
- Brain Health Fact Check
- Cancer Related Fact Check
- Child Care Fact Check
- Dental and oral health fact check
- Diabetes and metabolic health fact check
- Diet and Nutrition Fact Check
- Eye and ENT Care Fact Check
- Fitness fact check
- Gut health fact check
- Heart health fact check
- Kidney health fact check
- Medical education fact check
- Men's health fact check
- Respiratory fact check
- Skin and hair care fact check
- Vaccine and Immunization fact check
- Women's health fact check
- AYUSH
- State News
- Andaman and Nicobar Islands
- Andhra Pradesh
- Arunachal Pradesh
- Assam
- Bihar
- Chandigarh
- Chattisgarh
- Dadra and Nagar Haveli
- Daman and Diu
- Delhi
- Goa
- Gujarat
- Haryana
- Himachal Pradesh
- Jammu & Kashmir
- Jharkhand
- Karnataka
- Kerala
- Ladakh
- Lakshadweep
- Madhya Pradesh
- Maharashtra
- Manipur
- Meghalaya
- Mizoram
- Nagaland
- Odisha
- Puducherry
- Punjab
- Rajasthan
- Sikkim
- Tamil Nadu
- Telangana
- Tripura
- Uttar Pradesh
- Uttrakhand
- West Bengal
- Medical Education
- Industry
Smartphone AI model highly accurate in detecting pediatric eye diseases: JAMA
A new study published in the Journal of American Medical Association unveiled the artificial intelligence (AI) model which used only photos from smartphones, showed good performance in correctly diagnosing ptosis, strabismus, and myopia.
Early detection of pediatric eye disorders is a global concern where conventional screening methods are costly and time-consuming, requiring hospitals and ophthalmologists. Artificial intelligence might make it easier to diagnose eye diseases in a home environment by evaluating children's eye health using smartphone images. Qin Shu and colleagues carried out this research to create an AI model that can recognize ptosis, myopia, and strabismus from cellphone photos.
Children having a diagnosis of myopia, strabismus, or ptosis were included in this cross-sectional study, which took place at the Department of Ophthalmology at Shanghai Ninth People's Hospital between October 1, 2022 and September 30, 2023. A deep learning-based model for the diagnosis of ptosis, strabismus, and myopia was created. Sensitivity, specificity, accuracy, negative predictive values (NPV), positive predictive values (PPV), negative likelihood ratios (N-LR), positive likelihood ratios (P-LR),the area under the curve (AUC), and the F1-score were used to evaluate the model's performance. The effect of each region on the model was visually and analytically evaluated using GradCAM++. To confirm the model's generalizability, subgroup analyses by age and sex were carried out.
The model was constructed using 1419 pictures altogether, taken from 476 patients (225 female [47.27%] and 299 [62.82%] aged between 6 and 12 years). Of these, 473 binocular photos were utilized to diagnose strabismus, while 946 monocular images were used to diagnose myopia and ptosis. In terms of myopia, strabismus, and ptosis, the model showed high sensitivity. During sex subgroup analysis, the model performed as well in diagnosing eye abnormalities in children that were male and female. The ability to recognize eye diseases varied depending on the age group.
This cross-sectional study discovered that an AI-based detection algorithm performed well in properly recognizing myopia, strabismus, and ptosis using just smartphone photos. These findings imply that it can help families test their children for myopia, strabismus, and ptosis, allowing for early detection and lowering the risk of visual impairment and severe difficulties caused by delayed screening.
Reference:
Shu, Q., Pang, J., Liu, Z., Liang, X., Chen, M., Tao, Z., Liu, Q., Guo, Y., Yang, X., Ding, J., Chen, R., Wang, S., Li, W., Zhai, G., Xu, J., & Li, L. (2024). Artificial Intelligence for Early Detection of Pediatric Eye Diseases Using Mobile Photos. In JAMA Network Open (Vol. 7, Issue 8, p. e2425124). American Medical Association (AMA). https://doi.org/10.1001/jamanetworkopen.2024.25124
Neuroscience Masters graduate
Jacinthlyn Sylvia, a Neuroscience Master's graduate from Chennai has worked extensively in deciphering the neurobiology of cognition and motor control in aging. She also has spread-out exposure to Neurosurgery from her Bachelor’s. She is currently involved in active Neuro-Oncology research. She is an upcoming neuroscientist with a fiery passion for writing. Her news cover at Medical Dialogues feature recent discoveries and updates from the healthcare and biomedical research fields. She can be reached at editorial@medicaldialogues.in
Dr Kamal Kant Kohli-MBBS, DTCD- a chest specialist with more than 30 years of practice and a flair for writing clinical articles, Dr Kamal Kant Kohli joined Medical Dialogues as a Chief Editor of Medical News. Besides writing articles, as an editor, he proofreads and verifies all the medical content published on Medical Dialogues including those coming from journals, studies,medical conferences,guidelines etc. Email: drkohli@medicaldialogues.in. Contact no. 011-43720751