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A list of all the posts and pages found on the site. For you robots out there is an XML version available for digesting as well.

Pages

Posts

portfolio

AGATA

AGATA (Automated Glucose dATa Analysis) is an open-source toolbox to analyse glucose data.

bmthw

bmthw: Material for the laboratory of the course of Biomedical Wearable Technology for Healthcare and Wellbeing, Master’s degree in Bioengineering, Department of Information Engineering (DEI), University of Padova.

dexcom_flutter

dexcom_flutter: A Flutter package to make your life easier when dealing with Dexcom Web APIs.

Fitbitter

Fitbitter: A Flutter package to make your life easier when dealing with Fitbit APIs.

ReplayBG

ReplayBG is a novel open-source MATLAB® toolbox to assess new strategies for type 1 diabetes management on retrospective already collected patient data.

publications

A Neural-Network-Based Approach to Personalize Insulin Bolus Calculation Using Continuous Glucose Monitoring

Published in Journal of Diabetes Science and Technology, 2018

Download paper here

Recommended citation: Cappon G, Vettoretti M, Marturano F, Facchinetti A, Sparacino G. A Neural-Network-Based Approach to Personalize Insulin Bolus Calculation Using Continuous Glucose Monitoring. J Diabetes Sci Technol. 2018 Mar;12(2):265-272. doi: 10.1177/1932296818759558. PMID: 29493356; PMCID: PMC5851237. http://gcappon.github.io/files/cappon_jdst_2018.pdf

In Silico Assessment of Literature Insulin Bolus Calculation Methods Accounting for Glucose Rate of Change

Published in Journal of Diabetes Science and Technology, 2018

Download paper here

Recommended citation: Cappon G, Marturano F, Vettoretti M, Facchinetti A, Sparacino G. In Silico Assessment of Literature Insulin Bolus Calculation Methods Accounting for Glucose Rate of Change. J Diabetes Sci Technol. 2019 Jan;13(1):103-110. doi: 10.1177/1932296818777524. Epub 2018 May 31. PMID: 29848104; PMCID: PMC6313276. http://gcappon.github.io/files/cappon_jdst_2018_2.pdf

Continuous Glucose Monitoring Sensors for Diabetes Management: A Review of Technologies and Applications

Published in Diabetes & Metabolism Journal, 2019

Download paper here

Recommended citation: Cappon G, Vettoretti M, Sparacino G, Facchinetti A. Continuous Glucose Monitoring Sensors for Diabetes Management: A Review of Technologies and Applications. Diabetes Metab J. 2019 Aug;43(4):383-397. doi: 10.4093/dmj.2019.0121. PMID: 31441246; PMCID: PMC6712232. http://gcappon.github.io/files/cappon_dmj_2019.pdf

Classification of Postprandial Glycemic Status with Application to Insulin Dosing in Type 1 Diabetes-An In Silico Proof-of-Concept

Published in Sensors (Basel), 2019

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Recommended citation: Cappon G, Facchinetti A, Sparacino G, Georgiou P, Herrero P. Classification of Postprandial Glycemic Status with Application to Insulin Dosing in Type 1 Diabetes-An In Silico Proof-of-Concept. Sensors (Basel). 2019 Jul 18;19(14):3168. doi: 10.3390/s19143168. PMID: 31323886; PMCID: PMC6679291. http://gcappon.github.io/files/cappon_sensors_2019.pdf

Predicting Quality of Overnight Glycaemic Control in Type 1 Diabetes Using Binary Classifiers

Published in IEEE Journal of Biomedical Informatics, 2019

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Recommended citation: Guemes A, Cappon G, Hernandez B, Reddy M, Oliver N, Georgiou P, Herrero P. Predicting Quality of Overnight Glycaemic Control in Type 1 Diabetes Using Binary Classifiers. IEEE J Biomed Health Inform. 2020 May;24(5):1439-1446. doi: 10.1109/JBHI.2019.2938305. Epub 2019 Sep 13. PMID: 31536025. http://gcappon.github.io/files/guemes_jbhi_2019.pdf

Machine-Learning Based Model to Improve Insulin Bolus Calculation in Type 1 Diabetes Therapy

Published in IEEE Transactions on Biomedical Engineering, 2021

Download paper here

Recommended citation: Noaro G, Cappon G, Vettoretti M, Sparacino G, Favero SD, Facchinetti A. Machine-Learning Based Model to Improve Insulin Bolus Calculation in Type 1 Diabetes Therapy. IEEE Trans Biomed Eng. 2021 Jan;68(1):247-255. doi: 10.1109/TBME.2020.3004031. Epub 2020 Dec 21. PMID: 32746033. http://gcappon.github.io/files/noaro_tbme_2021.pdf

An Integrated Mobile Platform for Automated Data Collection and Real-Time Patient Monitoring in Diabetes Clinical Trials

Published in Journal of Diabetes Science and Technology, 2021

Download paper here

Recommended citation: Cappon G, Cossu L, Boscari F, Bruttomesso D, Sparacino G, Facchinetti A. An Integrated Mobile Platform for Automated Data Collection and Real-Time Patient Monitoring in Diabetes Clinical Trials. J Diabetes Sci Technol. 2021 Jul 3:19322968211024620. doi: 10.1177/19322968211024620. Epub ahead of print. PMID: 34218721. http://gcappon.github.io/files/cappon_jdst_2021.pdf

Methods for Insulin Bolus Adjustment Based on the Continuous Glucose Monitoring Trend Arrows in Type 1 Diabetes: Performance and Safety Assessment in an In Silico Clinical Trial

Published in Journal of Diabetes Science and Technology, 2021

Download paper here

Recommended citation: Noaro G, Cappon G, Sparacino G, Boscari F, Bruttomesso D, Facchinetti A. Methods for Insulin Bolus Adjustment Based on the Continuous Glucose Monitoring Trend Arrows in Type 1 Diabetes: Performance and Safety Assessment in an In Silico Clinical Trial. J Diabetes Sci Technol. 2021 Sep 6:19322968211043162. doi: 10.1177/19322968211043162. Epub ahead of print. PMID: 34486426. http://gcappon.github.io/files/noaro_jdst_2021.pdf

Individualized Models for Glucose Prediction in Type 1 Diabetes: Comparing Black-box Approaches To a Physiological White-box One

Published in IEEE Transactions on Biomedical Engineering, 2023

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Recommended citation: Cappon G, Prendin F, Sparacino G, Facchinetti A, Del Favero S. Individualized Models for Glucose Prediction in Type 1 Diabetes: Comparing Black-box Approaches To a Physiological White-box One. IEEE Trans Biomed Eng. 2023 May 17. doi: 10.1109/TBME.2023.3276193. Epub ahead of print. PMID: 37195837. http://gcappon.github.io/files/cappon_prendin_tbme_2023.pdf

ReplayBG: A Digital Twin-Based Methodology to Identify a Personalized Model from Type 1 Diabetes Data and Simulate Glucose Concentrations to Assess Alternative Therapies

Published in IEEE Transactions on Biomedical Engineering, 2023

Download paper here

Recommended citation: Cappon G, Vettoretti M, Sparacino G, Del Favero S, Facchinetti A. ReplayBG: A Digital Twin-Based Methodology to Identify a Personalized Model from Type 1 Diabetes Data and Simulate Glucose Concentrations to Assess Alternative Therapies. IEEE Trans Biomed Eng. 2023 Jun 27. doi: 10.1109/TBME.2023.3286856. Epub ahead of print. PMID: 37368794. http://gcappon.github.io/files/cappon_tbme_2023.pdf

talks

teaching

Medical Informatics, 2020/21

Masters course, University of Padova, Department of Information Engineering, 2020

Contract professor for the course unit Medical Informatics of the Bioengineering course (Master’s degree), School of Engineering, University of Padova (3 credits/CFU, SSD ING/INF-06) (~120 students).

Biomedical Wearable Technologies for Healthcare and Wellbeing, 2021/22

Masters course, University of Padova, Department of Information Engineering, 2022

Contract professor for the course unit Biomedical Wearable Technologies for Healthcare and Wellbeing of the Bioengineering course (Master’s degree), School of Engineering, University of Padova (3 credits/CFU, SSD ING/INF-06) (~80 students).

Biomedical Wearable Technologies for Healthcare and Wellbeing, 2022/23

Masters course, University of Padova, Department of Information Engineering, 2023

Contract professor for the course unit Biomedical Wearable Technologies for Healthcare and Wellbeing of the Bioengineering course (Master’s degree), School of Engineering, University of Padova (3 credits/CFU, SSD ING/INF-06) (~90 students).

Biomedical Wearable Technologies for Healthcare and Wellbeing, 2023/24

Masters course, University of Padova, Department of Information Engineering, 2024

Professor for the course unit Biomedical Wearable Technologies for Healthcare and Wellbeing of the Bioengineering course (Master’s degree), School of Engineering, University of Padova (6 credits/CFU, SSD ING/INF-06) (~120 students).