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  1. Article: A Roadmap for Boosting Model Generalizability for Predicting Hospital Encounters for Asthma.

    Luo, Gang

    JMIR medical informatics

    2022  Volume 10, Issue 3, Page(s) e33044

    Abstract: In the United States, ~9% of people have asthma. Each year, asthma incurs high health care cost and many hospital encounters covering 1.8 million emergency room visits and 439,000 hospitalizations. A small percentage of patients with asthma use most ... ...

    Abstract In the United States, ~9% of people have asthma. Each year, asthma incurs high health care cost and many hospital encounters covering 1.8 million emergency room visits and 439,000 hospitalizations. A small percentage of patients with asthma use most health care resources. To improve outcomes and cut resource use, many health care systems use predictive models to prospectively find high-risk patients and enroll them in care management for preventive care. For maximal benefit from costly care management with limited service capacity, only patients at the highest risk should be enrolled. However, prior models built by others miss >50% of true highest-risk patients and mislabel many low-risk patients as high risk, leading to suboptimal care and wasted resources. To address this issue, 3 site-specific models were recently built to predict hospital encounters for asthma, gaining up to >11% better performance. However, these models do not generalize well across sites and patient subgroups, creating 2 gaps before translating these models into clinical use. This paper points out these 2 gaps and outlines 2 corresponding solutions: (1) a new machine learning technique to create cross-site generalizable predictive models to accurately find high-risk patients and (2) a new machine learning technique to automatically raise model performance for poorly performing subgroups while maintaining model performance on other subgroups. This gives a roadmap for future research.
    Language English
    Publishing date 2022-03-01
    Publishing country Canada
    Document type Journal Article
    ZDB-ID 2798261-0
    ISSN 2291-9694
    ISSN 2291-9694
    DOI 10.2196/33044
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  2. Article ; Online: What Visual Targets Are Viewed by Users With a Handheld Mobile Magnifier App.

    Luo, Gang

    Translational vision science & technology

    2021  Volume 10, Issue 3, Page(s) 16

    Abstract: Purpose: Mobile video magnifier apps are used by many visually impaired people for seeing details that are beyond their visual capacity. Understanding the common types of visual targets will be importantly informative for low-vision research and ... ...

    Abstract Purpose: Mobile video magnifier apps are used by many visually impaired people for seeing details that are beyond their visual capacity. Understanding the common types of visual targets will be importantly informative for low-vision research and assistive technology development. This study addressed this question through analysis of images captured by magnifier app users pursuing their daily activities.
    Methods: An iOS magnifier app, free to the public, was used to capture and upload images to the Azure Computer Vision cloud service for object recognition. Returned object tag results for each image were uploaded to the Umeng analytics server for aggregated tallies. Consolidated data from 24,295 users across 1 month were analyzed. More than 1300 types of object tags found in 152,819 images were grouped into 11 categories. The data collection and analyses were conducted separately for users who toggled on or off iOS vision-accessibility features.
    Results: For accessibility and nonaccessibility user groups, 60% to 70% of objects were nontextual, such as an indoor scene, human, or art. More than 40% of the images contained more than one object category. Accessibility users viewed textual objects more frequently than nonaccessibility users (41.1% vs. 29.8%), but overall, the probability ranking of categories was not significantly different between the two groups.
    Conclusions: Nontextual objects make up a major portion of visual needs of magnifier users across a wide range of vision loss.
    Translational relevance: Low-vision research and vision assistance technology development should address the need for nontextual object viewing.
    MeSH term(s) Blindness ; Humans ; Mobile Applications ; Self-Help Devices ; Vision, Low ; Visually Impaired Persons
    Language English
    Publishing date 2021-06-07
    Publishing country United States
    Document type Journal Article
    ZDB-ID 2674602-5
    ISSN 2164-2591 ; 2164-2591
    ISSN (online) 2164-2591
    ISSN 2164-2591
    DOI 10.1167/tvst.10.3.16
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  3. Article: A Roadmap for Automating Lineage Tracing to Aid Automatically Explaining Machine Learning Predictions for Clinical Decision Support.

    Luo, Gang

    JMIR medical informatics

    2021  Volume 9, Issue 5, Page(s) e27778

    Abstract: Using machine learning predictive models for clinical decision support has great potential in improving patient outcomes and reducing health care costs. However, most machine learning models are black boxes that do not explain their predictions, thereby ... ...

    Abstract Using machine learning predictive models for clinical decision support has great potential in improving patient outcomes and reducing health care costs. However, most machine learning models are black boxes that do not explain their predictions, thereby forming a barrier to clinical adoption. To overcome this barrier, an automated method was recently developed to provide rule-style explanations of any machine learning model's predictions on tabular data and to suggest customized interventions. Each explanation delineates the association between a feature value pattern and an outcome value. Although the association and intervention information is useful, the user of the automated explaining function often requires more detailed information to better understand the patient's situation and to aid in decision making. More specifically, consider a feature value in the explanation that is computed by an aggregation function on the raw data, such as the number of emergency department visits related to asthma that the patient had in the prior 12 months. The user often wants to rapidly drill through to see certain parts of the related raw data that produce the feature value. This task is frequently difficult and time-consuming because the few pieces of related raw data are submerged by many pieces of raw data of the patient that are unrelated to the feature value. To address this issue, this paper outlines an automated lineage tracing approach, which adds automated drill-through capability to the automated explaining function, and provides a roadmap for future research.
    Language English
    Publishing date 2021-05-27
    Publishing country Canada
    Document type Journal Article
    ZDB-ID 2798261-0
    ISSN 2291-9694
    ISSN 2291-9694
    DOI 10.2196/27778
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  4. Article ; Online: Investigation of Population-Based Fall Risk in Eye Diseases.

    Pundlik, Shrinivas / Luo, Gang

    JAMA ophthalmology

    2023  Volume 142, Issue 2, Page(s) 106–107

    MeSH term(s) Humans ; Risk Factors ; Eye Diseases/diagnosis ; Eye Diseases/epidemiology ; Disease Susceptibility
    Language English
    Publishing date 2023-12-28
    Publishing country United States
    Document type Journal Article
    ZDB-ID 2701705-9
    ISSN 2168-6173 ; 2168-6165
    ISSN (online) 2168-6173
    ISSN 2168-6165
    DOI 10.1001/jamaophthalmol.2023.6102
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  5. Article ; Online: Letter to the editor: Abdominal obesity mediates the causal relationship between depression and the risk of gallstone disease: retrospective cohort study and Mendelian randomization analyses.

    Chen, Jie / Luo, Gang

    Journal of psychosomatic research

    2023  Volume 177, Page(s) 111569

    MeSH term(s) Humans ; Obesity, Abdominal ; Mendelian Randomization Analysis ; Depression ; Retrospective Studies ; Obesity ; Cholelithiasis
    Language English
    Publishing date 2023-12-21
    Publishing country England
    Document type Letter
    ZDB-ID 80166-5
    ISSN 1879-1360 ; 0022-3999
    ISSN (online) 1879-1360
    ISSN 0022-3999
    DOI 10.1016/j.jpsychores.2023.111569
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  6. Article ; Online: Letter to the editor about "Effect of CVAI on the incidence of MASLD compared to BMI in populations with different body types: A prospective cohort study in China".

    Chen, Jie / Luo, Gang

    Nutrition, metabolism, and cardiovascular diseases : NMCD

    2023  Volume 34, Issue 2, Page(s) 532–533

    MeSH term(s) Humans ; Incidence ; Body Mass Index ; Prospective Studies ; Somatotypes ; China/epidemiology
    Language English
    Publishing date 2023-11-23
    Publishing country Netherlands
    Document type Letter
    ZDB-ID 1067704-5
    ISSN 1590-3729 ; 0939-4753
    ISSN (online) 1590-3729
    ISSN 0939-4753
    DOI 10.1016/j.numecd.2023.11.014
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  7. Article ; Online: A roadmap for semi-automatically extracting predictive and clinically meaningful temporal features from medical data for predictive modeling.

    Luo, Gang

    Global transitions

    2019  Volume 1, Page(s) 61–82

    Abstract: Predictive modeling based on machine learning with medical data has great potential to improve healthcare and reduce costs. However, two hurdles, among others, impede its widespread adoption in hdealthcare. First, medical data are by nature longitudinal. ...

    Abstract Predictive modeling based on machine learning with medical data has great potential to improve healthcare and reduce costs. However, two hurdles, among others, impede its widespread adoption in hdealthcare. First, medical data are by nature longitudinal. Pre-processing them, particularly for feature engineering, is labor intensive and often takes 50-80% of the model building effort. Predictive temporal features are the basis of building accurate models, but are difficult to identify. This is problematic. Healthcare systems have limited resources for model building, while inaccurate models produce sub-optimal outcomes and are often useless. Second, most machine learning models provide no explanation of their prediction results. However, offering such explanations is essential for a model to be used in usual clinical practice. To address these two hurdles, this paper outlines: 1) a data-driven method for semi-automatically extracting predictive and clinically meaningful temporal features from medical data for predictive modeling; and 2) a method of using these features to automatically explain machine learning prediction results and suggest tailored interventions. This provides a roadmap for future research.
    Language English
    Publishing date 2019-03-27
    Publishing country China
    Document type Journal Article
    ISSN 2589-7918
    ISSN (online) 2589-7918
    DOI 10.1016/j.glt.2018.11.001
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  8. Article: Progress Indication for Machine Learning Model Building: A Feasibility Demonstration.

    Luo, Gang

    SIGKDD explorations : newsletter of the Special Interest Group (SIG) on Knowledge Discovery & Data Mining

    2019  Volume 20, Issue 2, Page(s) 1–12

    Abstract: Progress indicators are desirable for machine learning model building that often takes a long time, by continuously estimating the remaining model building time and the portion of model building work that has been finished. Recently, we proposed a high- ... ...

    Abstract Progress indicators are desirable for machine learning model building that often takes a long time, by continuously estimating the remaining model building time and the portion of model building work that has been finished. Recently, we proposed a high-level framework using system approaches to support non-trivial progress indicators for machine learning model building, but offered no detailed implementation technique. It remains to be seen whether it is feasible to provide such progress indicators. In this paper, we fill this gap and give the first demonstration that offering such progress indicators is viable. We describe detailed progress indicator implementation techniques for three major, supervised machine learning algorithms. We report an implementation of these techniques in Weka.
    Language English
    Publishing date 2019-03-04
    Publishing country United States
    Document type Journal Article
    ZDB-ID 2082223-6
    ISSN 1931-0145 ; 1931-0153
    ISSN 1931-0145 ; 1931-0153
    DOI 10.1145/3299986.3299988
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  9. Article ; Online: How 16,000 people used a smartphone magnifier app in their daily lives.

    Luo, Gang

    Clinical & experimental optometry

    2019  Volume 103, Issue 6, Page(s) 847–852

    Abstract: Background: Smartphone video magnifier apps are being used by millions of people to assist their vision. To understand the behaviour of app users, an exploratory investigation was conducted based on 'big data' collected from their daily uses.: Method!# ...

    Abstract Background: Smartphone video magnifier apps are being used by millions of people to assist their vision. To understand the behaviour of app users, an exploratory investigation was conducted based on 'big data' collected from their daily uses.
    Method: A mobile magnification app was developed with embedded analytics data collection modules. Seven months after it was released to the public, 30 days of app use data were collected from 16,787 active users across 129 countries. App launches and function use were analysed.
    Results: The app was most commonly used for one to three minutes a day, while a very small portion of users (0.5 per cent) used it over 100 times within the month and over 30 minutes each time. Some of the focused objects (13 per cent with Apple iPhone and 21 per cent with Apple iPad) were further than two metres away. Two functions that can be used to address the image shaking problem - live image stabilisation and snapshot - were compared, and it was found the former was used more often than the latter in terms of event/launch ratio and event duration. The flash light function (daily mean 209 seconds per device) was used more than focus locking (47 seconds) and inverted colour (28 seconds).
    Conclusions: The mobile magnification app was mostly used for brief spot reading, while long reading occurred as well. As versatile devices, smartphones were used for near and sometimes far vision reading. This study presents a novel methodology helpful for understanding the behaviour of users and evaluating the utility of specific functions.
    MeSH term(s) Eyeglasses ; Humans ; Mobile Applications ; Reading ; Smartphone
    Language English
    Publishing date 2019-11-26
    Publishing country United States
    Document type Journal Article
    ZDB-ID 639275-1
    ISSN 1444-0938 ; 0816-4622
    ISSN (online) 1444-0938
    ISSN 0816-4622
    DOI 10.1111/cxo.12996
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  10. Article ; Online: Using Smartphones to Enhance Vision Screening in Rural Areas: Pilot Study.

    Wang, Zheng / Kempen, John / Luo, Gang

    JMIR formative research

    2024  Volume 8, Page(s) e55270

    Abstract: Background: While it is treatable, uncorrected refractive error is the number one cause of visual impairment worldwide. This eye condition alone, or together with ocular misalignment, can also cause amblyopia, which is also treatable if detected early ... ...

    Abstract Background: While it is treatable, uncorrected refractive error is the number one cause of visual impairment worldwide. This eye condition alone, or together with ocular misalignment, can also cause amblyopia, which is also treatable if detected early but still occurs in about 4% of the population. Mass vision screening is the first and most critical step to address these issues, but due to limited resources, vision screening in many rural areas remains a major challenge.
    Objective: We aimed to pilot-test the feasibility of using smartphone apps to enhance vision screening in areas where access to eye care is limited.
    Methods: A vision screening program was piggybacked on a charity summer camp program in a rural county in Sichuan, China. A total of 73 fourth and fifth graders were tested for visual acuity using a standard eye chart and were then tested for refractive error and heterophoria using 2 smartphone apps (a refraction app and a strabismus app, respectively) by nonprofessional personnel.
    Results: A total of 5 of 73 (6.8%, 95% CI 2.3%-15.3%) students were found to have visual acuity worse than 20/20 (logarithm of minimal angle of resolution [logMAR] 0) in at least one eye. Among the 5 students, 3 primarily had refractive error according to the refraction app. The other 2 students had manifest strabismus (one with 72-prism diopter [PD] esotropia and one with 33-PD exotropia) according to the strabismus app. Students without manifest strabismus were also measured for phoria using the strabismus app in cover/uncover mode. The median phoria was 0.0-PD (IQR 2.9-PD esophoria to 2.2-PD exophoria).
    Conclusions: The results from this vision screening study are consistent with findings from other population-based vision screening studies in which conventional tools were used by ophthalmic professionals. The smartphone apps are promising and have the potential to be used in mass vision screenings for identifying risk factors for amblyopia and for myopia control. The smartphone apps may have significant implications for the future of low-cost vision care, particularly in resource-constrained and geographically remote areas.
    Language English
    Publishing date 2024-04-04
    Publishing country Canada
    Document type Journal Article
    ISSN 2561-326X
    ISSN (online) 2561-326X
    DOI 10.2196/55270
    Database MEDical Literature Analysis and Retrieval System OnLINE

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