scholarly journals State-of-the-Art Risk Models for Diabetes, Hypertension, Visual Diminution, and COVID-19 Severity in Mexico

Author(s):  
Heladio Amaya ◽  
Jennifer Enciso ◽  
Daniela Meizner ◽  
Alex Pentland ◽  
Alejandro Noriega

BACKGROUNDDiabetes and hypertension are among top public health priorities, particularly in low and middle-income countries where their health and socioeconomic impact is exacerbated by the quality and accessibility of health care. Moreover, their connection with severe or deadly COVID-19 illness has further increased their societal relevance. Tools for early detection of these chronic diseases enable interventions to prevent high-impact complications, such as loss of sight and kidney failure. Similarly, prognostic tools for COVID-19 help stratify the population to prioritize protection and vaccination of high-risk groups, optimize medical resources and tests, and raise public awareness.METHODSWe developed and validated state-of-the-art risk models for the presence of undiagnosed diabetes, hypertension, visual complications associated with diabetes and hypertension, and the risk of severe COVID-19 illness (if infected). The models were estimated using modern methods from the field of statistical learning (e.g., gradient boosting trees), and were trained on publicly available data containing health and socioeconomic information representative of the Mexican population. Lastly, we assembled a short integrated questionnaire and deployed a free online tool for massifying access to risk assessment.RESULTSOur results show substantial improvements in accuracy and algorithmic equity (balance of accuracy across population subgroups), compared to established benchmarks. In particular, the models: i) reached state-of-the-art sensitivity and specificity rates of 90% and 56% (0.83 AUC) for diabetes, 80% and 64% (0.79 AUC) for hypertension, 90% and 56% (0.84 AUC) for visual diminution as a complication, and 90% and 60% (0.84 AUC) for development of severe COVID disease; and ii) achieved substantially higher equity in sensitivity across gender, indigenous/non-indigenous, and regional populations. In addition, the most relevant features used by the models were in line with risk factors commonly identified by previous studies. Finally, the online platform was deployed and made accessible to the public on a massive scale.CONCLUSIONSThe use of large databases representative of the Mexican population, coupled with modern statistical learning methods, allowed the development of risk models with state-of-the-art accuracy and equity for two of the most relevant chronic diseases, their eye complications, and COVID-19 severity. These tools can have a meaningful impact on democratizing early detection, enabling large-scale preventive strategies in low-resource health systems, increasing public awareness, and ultimately raising social well-being.

1983 ◽  
Vol 22 (03) ◽  
pp. 149-150 ◽  
Author(s):  
Rina Chen

A procedure for determining the parameters required for implementing a recently suggested monitoring system is described. A table of these parameters is also presented. While the parameters originally suggested were determined so as to increase the efficiency of a single analysis, the parameters presented here are aimed at the early detection of slightly increased rates of occurrences within a number of analyses.


Author(s):  
A. Zimmermann ◽  
C. Visscher ◽  
M. Kaltschmitt

AbstractFructans are carbohydrates consisting of fructose monomers linked by β-2,1- and/or β-2,6-glycosidic bonds with linear or branched structure. These carbohydrates belong to the group of prebiotic dietary fibre with health-promoting potential for humans and mammals due to their indigestibility and selective stimulation of microorganisms in the gastrointestinal tract. This makes fructans interesting mainly for healthy food as well as animal feed applications. As a consequence of a growing public awareness for animal welfare, dietary fibre and thus fructans move into the focus as a fibre-rich feeding improving not only animals’ health but also their well-being. Against this background, this paper summarises the known effects of fructans focusing on pigs and highlights the state of the art in fructan production processes from plant material as well as selected current research lines. Additionally, an attempt is made to assess the potential of European fructan production for an application as animal feed. Based on this, challenges in the field of fructan production are addressed and alternative substrates for fructans are discussed and pointed out.


2021 ◽  
Author(s):  
Leila Zahedi ◽  
Farid Ghareh Mohammadi ◽  
M. Hadi Amini

Machine learning techniques lend themselves as promising decision-making and analytic tools in a wide range of applications. Different ML algorithms have various hyper-parameters. In order to tailor an ML model towards a specific application, a large number of hyper-parameters should be tuned. Tuning the hyper-parameters directly affects the performance (accuracy and run-time). However, for large-scale search spaces, efficiently exploring the ample number of combinations of hyper-parameters is computationally challenging. Existing automated hyper-parameter tuning techniques suffer from high time complexity. In this paper, we propose HyP-ABC, an automatic innovative hybrid hyper-parameter optimization algorithm using the modified artificial bee colony approach, to measure the classification accuracy of three ML algorithms, namely random forest, extreme gradient boosting, and support vector machine. Compared to the state-of-the-art techniques, HyP-ABC is more efficient and has a limited number of parameters to be tuned, making it worthwhile for real-world hyper-parameter optimization problems. We further compare our proposed HyP-ABC algorithm with state-of-the-art techniques. In order to ensure the robustness of the proposed method, the algorithm takes a wide range of feasible hyper-parameter values, and is tested using a real-world educational dataset.


Author(s):  
Lukman Fauzi ◽  
R.R. Sri Ratna Rahayu ◽  
Lindra Anggorowati ◽  
Hendri Hariyanto ◽  
Trinita Septi Mentari ◽  
...  

Diabetes Mellitus (DM) is a non-communicable disease that contributes to the cause of death. Based on the analysis of the situation in Kawengen Village, Semarang Regency, there were several problems related to the incidence of DM, including the Non-Communicable Disease Integrated Guidance Post Program (Posbindu PTM), which was not running optimally. Based on these problems, it is necessary to form a movement called the Anti-Diabetes Mellitus Community Alert Movement (SIMANIS). Active case finding and detection of pre-DM cases aim to capture people who already have pre-DM symptoms, but they do not know. Furthermore, if caught, they can be followed up so that they are willing to go to the health service unit before complications occur. The implementation of this community service activity is carried out in four stages, namely the formation of SIMANIS cadres, education on prevention and control of DM to SIMANIS cadres and the community, ToT on how to fill in and use the SIDIA Card (pre-diabetes screening) to SIMANIS cadres, and use of the SIDIA Card for early detection active case finding pre-DM. There was an increase in the pre-post education knowledge score from 7.59 + 1.5 to 8.93 + 0.9 and an increase in the pre-post education attitude score from 7.96 + 1.22 to 9.07 + 0.78. SIMANIS through the use of the SIDIA Card can be used to increase public awareness in prevention, early detection, and case finding of DM.


2016 ◽  
Vol 5 (2) ◽  
Author(s):  
Widodo Widodo ◽  
Sumardino Sumardino

Abstract: Awareness, Early Detection Capabilities, And Community Empowerment. This study aims to improve the ability of elderly people in the early detection of degenerative diseases in Posyandu Melati III Tegalrejo, Ceper, Klaten. While the specific purpose of this study was to describe the initial knowledge of early detection of degenerative diseases, describing the changes of knowledge and capacity for early detection of degenerative diseases post-counseling and training. This study used a quasi-experimental research design (queasy-experiment). The data source of this research is a group of elderly Posyandu Bed III Tegalrejo, Ceper, Klaten with the method of selecting a sample is total population. The tools used in this study was a questionnaire to evaluate the cognitive, psychomotor aspects SOP to evaluate and extension materials. Results showed that changes in knowledge and capacity for early detection of the elderly against degenerative diseases in Posyandu Melati III Tegalrejo, Ceper, Klaten. This is evident from the test results of paired t-test with a significance value of 0.000> 0.05. The provision of health education and training early detection of degenerative diseases can increase knowledge of the initial capital to raise public awareness about the importance of early detection capabilities against degenerative diseases so that the quality and degree of health of the elderly can be optimized.


2021 ◽  
Vol 17 ◽  
Author(s):  
Rajasekhar Chokkareddy ◽  
Suvardhan Kanchi ◽  
Inamuddin

Background: While significant strides have been made to avoid mortality during the treatment of chronic diseases, it is still one of the biggest health-care challenges that have a profound effect on humanity. The development of specific, sensitive, accurate, quick, low-cost, and easy-to-use diagnostic tools is therefore still in urgent demand. Nanodiagnostics is defined as the application of nanotechnology to medical diagnostics that can offer many unique opportunities for more successful and efficient diagnosis and treatment for infectious diseases. Methods: In this review we provide an overview of infectious disease using nanodiagnostics platforms based on nanoparticles, nanodevices for point-of-care (POC) applications. Results: Current state-of-the-art and most promising nanodiagnostics POC technologies, including miniaturized diagnostic tools, nanorobotics and drug delivery systems have been fully examined for the diagnosis of diseases. It also addresses the drawbacks, problems and potential developments of nanodiagnostics in POC applications for chronic diseases. Conclusions: While progress is gaining momentum in this field and many researchers have dedicated their time in developing new smart nanodevices for POC applications for various chronic diseases, the ultimate aim of achieving longterm, reliable and continuous patient monitoring has not yet been achieved. Moreover, the applicability of the manufactured nanodevices to rural patients for on-site diagnosis, cost, and usability are the crucial aspects that require more research, improvements, and potential testing stations. Therefore, more research is needed to develop the demonstrated smart nanodevices and upgrade their applicability to hospitals away from the laboratories.


2012 ◽  
Vol 4 (1) ◽  
pp. 17-36 ◽  
Author(s):  
Pedram Hayati ◽  
Vidyasagar Potdar

Spam 2.0 is defined as the propagation of unsolicited, anonymous, mass content to infiltrate legitimate Web 2.0 applications. A fake eye-catching profile in social networking websites, a promotional review, a response to a thread in online forums with unsolicited content, or a manipulated Wiki page are examples of Spam 2.0. In this paper, the authors provide a comprehensive survey of the state-of-the-art, detection-based, prevention-based and early-detection-based Spam 2.0 filtering methods.


2020 ◽  
Vol 36 (4) ◽  
pp. 1189-1198
Author(s):  
Nureni Olawale Adeboye ◽  
Olawale Victor Abimbola

Machine learning is a branch of artificial intelligence that helps machines learn from observational data without being explicitly programmed and its methods have been found to be very useful in the modern age for medical diagnosis and for early detection of diseases. According to the World Health Organization, 12 million deaths occur annually due to heart-related diseases. Thus, its early detection and treatment are of interest. This research introduces a better way of improving the timely prediction of cardiovascular diseases in suspected patients by comparing the efficiency of two boosting algorithms with four (4) other single based classifiers on cardiovascular official data. The best model was selected based on performances of 5 different evaluation metrics. From the results, Adaptive boosting is seen to outperform all other algorithms with a classification accuracy of 74.2%, closely followed by gradient boosting. However, gradient boosting was chosen as an acceptable technique because it trains faster than Adaboost with a better precision of 74.9% compared to 74.7% exhibited by Adaboost. Thus boosting algorithms are better predictors compared to single based classifiers with factors of age, systolic blood pressure, weight, cholesterol, height, and diastolic blood pressure as the major contributors to the model building.


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