2.Expert consensus on fundus photograph-based cardiovascular risk assessment using artificial intelligence technology.
Chinese Journal of Internal Medicine 2024;63(1):28-34
Cardiovascular risk assessment is a basic tenet of the prevention of cardiovascular disease. Conventional risk assessment models require measurements of blood pressure, blood lipids, and other health-related information prior to assessment of risk via regression models. Compared with traditional approaches, fundus photograph-based cardiovascular risk assessment using artificial intelligence (AI) technology is novel, and has the advantages of immediacy, non-invasiveness, easy performance, and low cost. The Health Risk Assessment and Control Committee of the Chinese Preventive Medicine Association, in collaboration with the Chinese Society of Cardiology and the Society of Health Examination, invited multi-disciplinary experts to form a panel to develop the present consensus, which includes relevant theories, progress in research, and requirements for AI model development, as well as applicable scenarios, applicable subjects, assessment processes, and other issues associated with applying AI technology to assess cardiovascular risk based on fundus photographs. A consensus was reached after multiple careful discussions on the relevant research, and the needs of the health management industry in China and abroad, in order to guide the development and promotion of this new technology.
Humans
;
Cardiovascular Diseases/prevention & control*
;
Artificial Intelligence
;
Consensus
;
Risk Factors
;
Heart Disease Risk Factors
3.Temporal Unfolding of Racial Ingroup Bias in Neural Responses to Perceived Dynamic Pain in Others.
Chenyu PANG ; Yuqing ZHOU ; Shihui HAN
Neuroscience Bulletin 2024;40(2):157-170
In this study, we investigated how empathic neural responses unfold over time in different empathy networks when viewing same-race and other-race individuals in dynamic painful conditions. We recorded magnetoencephalography signals from Chinese adults when viewing video clips showing a dynamic painful (or non-painful) stimulation to Asian and White models' faces to trigger painful (or neutral) expressions. We found that perceived dynamic pain in Asian models modulated neural activities in the visual cortex at 100 ms-200 ms, in the orbitofrontal and subgenual anterior cingulate cortices at 150 ms-200 ms, in the anterior cingulate cortex around 250 ms-350 ms, and in the temporoparietal junction and middle temporal gyrus around 600 ms after video onset. Perceived dynamic pain in White models modulated activities in the visual, anterior cingulate, and primary sensory cortices after 500 ms. Our findings unraveled earlier dynamic activities in multiple neural circuits in response to same-race (vs other-race) individuals in dynamic painful situations.
Adult
;
Humans
;
Brain Mapping
;
Pain
;
Empathy
;
Racism
;
Gyrus Cinguli/physiology*
;
Magnetic Resonance Imaging
;
Brain/physiology*
5.Utilization of artificial intelligence in breast pathology: An overview
Philippine Journal of Pathology 2024;9(1):6-10
In the last decade, artificial intelligence (AI) has been increasingly used in various fields of medicine. Recently, the advent of whole slide images (WSI) or digitized slides has paved the way for AI-based anatomic pathology. This paper set out to review the potential integration of AI algorithms in the workflow, and the utilization of AI in the practice of breast pathology.
Artificial Intelligence
;
Breast Neoplasms
6.A sonographic evaluation on agreement and time efficiency of fetal central nervous system biometry using semi-automated five-dimensional ultrasound versus standard two dimensional ultrasound in a Philippine Tertiary Hospital
Lizzette Reduque Caro‑Alquiros ; Zarinah Garcia Gonzaga ; Irene B. Quinio
Philippine Journal of Obstetrics and Gynecology 2024;48(2):90-97
Background:
Proper assessment and efficient diagnosis of central nervous system anomalies is
essential in antenatal surveillance of pregnant patients. These anomalies are usually associated with
genetic syndromes or severe malformations requiring timely intervention and antenatal counseling
of the expectant couple.
Objective:
The study aims to evaluate the agreement of cranial biometric measurements and
to determine if there is a significant difference in the time needed to complete the evaluation using
standard 2D and semi-automated 5D ultrasound.
Methods:
An analytical cross-sectional study was employed on 93 women who underwent pelvic
ultrasound scans from August to October 2022 in a tertiary hospital. Basic biometric fetal central
nervous system (CNS) measurements were acquired using 2D ultrasound followed by 5D CNS
ultrasound. Bland-Altman plots were used to evaluate the agreement of the measurements obtained.
The difference in the time to completion was determined using independent t-test.
Results and Conclusions
Our study found that 5D CNS ultrasound measurements showed
96.8% agreement with 2D ultrasound in 90 out of 93 fetuses. The 5D CNS ultrasound takes a
shorter time of 90 seconds (s) to completion in comparison to 99 s using the 2D method (p=0.076).
Upon stratification of the study population per trimester, in the second trimester, it took 76 s with 5D
CNS vs 89 s with 2D, resulting to a statistically significant 13-second difference (p=0.044). In the
third trimester, 5D CNS took 105 s vs 108 s with 2D (p=0.614). The time to completion of the scan
using this technology is faster when used for second trimester pregnancies but could be affected
by fetal-dependent and operator-dependent factors. Therefore, application of this new technology
has the potential to improve workflow efficiency after the necessary training on 3D sonography and
5D CNS ultrasound software.
Artificial Intelligence
7.A cross-sectional study on self-determined motivation towards physical activity among healthcare professionals at a tertiary hospital in Makati.
The Filipino Family Physician 2024;62(1):113-119
BACKGROUND
According to the World Health Organization, in 2016, there were more than 1.9 billion adults who were overweight. Of these, over 650 million were obese. Physical inactivity is one of the major risk factors for several non-communicable diseases. Healthcare workers who have direct contact with patients often influence their behaviors. However, health care workers who educate their patients but they themselves do not practice what they recommend, may be one of the barriers that can affect patient education and influence.
OBJECTIVEThis research paper aimed to investigate the motivation to participate in physical activity among healthcare workers and to determine the association between the profile of respondents with the different types of motivation.
METHODSThere was a total of 250 randomly selected respondents who were included in the study. Data were gathered through a self-administered questionnaire utilizing the International Physical Activity Questionnaire-Short Form (IPAQ-SF) and the Behavioral Regulation in Exercise Questionnaire (BREQ-2). Descriptive statistics was used to summarize sociodemographic information, physical activity levels and BREQ-2 profiles. T-test was used to analyze differences in gender while analysis of variance (ANOVA) was used for levels of physical activity and professional category.
RESULTSFemale healthcare professionals have a higher average in amotivation (mean=0.56) while males have a higher average in intrinsic (mean=2.82) motivation. Nurses and ancillary services have higher average amotivation scores than physicians.
CONCLUSIONHealth care workers who have high classification in physical activity have the highest average scores in terms of relative autonomy index, introjected, identified, and intrinsic scores. This demonstrates a positive association between motivation from internal regulation and increased physical activity.
Motivation ; Health Personnel ; Healthcare Workers ; Physical Activity
8.Generative Artificial Intelligence (AI) in scientific publications
Journal of the ASEAN Federation of Endocrine Societies 2024;39(1):4-5
Twenty-six years earlier in their famous chess rematch, an IBM Supercomputer called Deep Blue defeated then-world chess champion Garry Kasparov: it was the first-ever chess match won by a machine, a much celebrated milestone in the field of Artificial Intelligence. Just last year, the World Association of Medical Editors released the “WAME Recommendations on Chatbots and Generative Artificial Intelligence in Relation to Scholarly Publications,” a recognition of not just the expanding applications of AI in scholarly publishing but more so of the accompanying emergence of concerns on authenticity and accuracy. In recognition of this relevant topic, our Vice Editor in Chief, Dr. Cecile Jimeno, provided a well-attended and interesting talk during the last ASEAN Federation of Endocrine Society Convention in Thailand on the “Emerging Issues on the Use of Artificial Intelligence for Scientific Publications.”
Artificial Intelligence
9.The impact of anatomic racial variations on artificial intelligence analysis of Filipino retinal fundus photographs using an image-based deep learning model
Carlo A. Kasala ; Kaye Lani Rea B. Locaylocay ; Paolo S. Silva
Philippine Journal of Ophthalmology 2024;49(2):130-137
OBJECTIVES
This study evaluated the accuracy of an artificial intelligence (AI) model in identifying retinal lesions, validated its performance on a Filipino population dataset, and evaluated the impact of dataset diversity on AI analysis accuracy.
METHODSThis cross-sectional, analytical, institutional study analyzed standardized macula-centered fundus photos taken with the Zeiss Visucam®. The AI model’s output was compared with manual readings by trained retina specialists.
RESULTSA total of 215 eyes from 109 patients were included in the study. Human graders identified 109 eyes (50.7%) with retinal abnormalities. The AI model demonstrated an overall accuracy of 73.0% (95% CI 66.6% – 78.8%) in detecting abnormal retinas, with a sensitivity of 54.1% (95% CI 44.3% – 63.7%) and specificity of 92.5% (95% CI 85.7% – 96.7%).
CONCLUSIONThe availability and sources of AI training datasets can introduce biases into AI algorithms. In our dataset, racial differences in retinal morphology, such as differences in retinal pigmentation, affected the accuracy of AI image-based analysis. More diverse datasets and external validation on different populations are needed to mitigate these biases.
Human ; Artificial Intelligence ; Deep Learning
10.Automated machine learning for referable diabetic retinopathy image classification from ultrawide field images
Leandro Victor L. Arcena ; Paolo S. Silva
Philippine Journal of Ophthalmology 2024;49(2):138-143
OBJECTIVE
To develop and evaluate the diagnostic performance of an automated machine learning (AutoML) model for the detection of referable diabetic retinopathy (refDR) in ultrawide field (UWF) retinal images from local Philippine retinal image datasets.
METHODSA Google AutoML Vision model was trained using 2000 UWF images with a 50/50 ratio of refDR/non-refDR. Images were labeled according to the Early Treatment Diabetic Retinopathy Study (ETDRS) severity grading. RefDR was defined as moderate nonproliferative DR or worse. The dataset was split with 80% for training, 10% for validation, and 10% for testing. Two sets of published UWF image sets were used for external validation. Sensitivity and specificity were calculated in accordance with United States Food and Drug Administration (US FDA) performance requirements of 0.85 and 0.825, respectively.
RESULTSThe area under the precision-recall curve was 0.998. External validation against two datasets showed a sensitivity/specificity of 0.88/0.83 (95% CI 0.80-0.94/0.74-0.89) and 0.83/0.80 (95% CI 0.74-0.89/0.72-0.86), respectively. Positive and negative predictive values were 0.81/0.89 (95% CI 0.73-0.89/0.82-0.94) and 0.75/0.86 (95% CI 0.66-0.83/0.79-0.91), respectively.
CONCLUSIONThe pilot performance of the custom AutoML model constructed using local Philippine data approaches US FDA requirements for the diagnosis of referable DR. The ease of use and intuitiveness of the platform, combined with its performance, support the potential of no-code AI in the detection of refDR.
Artificial Intelligence ; Machine Learning


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