Carbohydrate Estimation Supported by the GoCARB System

NCT ID: NCT02546063

Last Updated: 2016-08-10

Study Results

Results pending

The study team has not published outcome measurements, participant flow, or safety data for this trial yet. Check back later for updates.

Basic Information

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Recruitment Status

COMPLETED

Clinical Phase

NA

Total Enrollment

20 participants

Study Classification

INTERVENTIONAL

Study Start Date

2015-08-31

Study Completion Date

2015-12-31

Brief Summary

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The standard method for determining the carbohydrate content of a meal in patients with diabetes mellitus is the weighing of individual foods. However, in daily life, the weighing is not practical at all times. Inaccurate estimation of meal's CHO content, leads to wrong insulin doses and consequently to poor postprandial glucose control. Fact is that even well trained diabetic individuals find it difficult to estimate CHO precisely and that especially meals served on a plate are prone to false estimations underlining an emergent need for novel approaches to CHO estimation.

GoCarb is a computer vision-based system for calculating the carbohydrate content of meals. In a typical scenario, the user places a credit card-sized reference object next to the meal and acquires two images using his/her smartphone. A series of computer vision modules follows: the plate is detected and the different food items on the plate are automatically segmented and recognized, while their 3D shape is reconstructed. On the basis of the shape, the segmentation results and the reference card, the volume of each item is then estimated. The CHO content is calculated by combining the food types with its volumes, and by using the USDA nutritional database. Finally, the results are displayed to the user.

A preclinical study using the GoCarb system indicates that the system is able to estimate the meal's CHO content with higher accuracy than individuals with T1D. Furthermore, the feedback gathered by the participants showed that the system is easy to use even for non-smartphone users.

The aim of this randomized, cross-over pilot study is to investigate the benefits of an automated determination of the carbohydrate content of meals on glycemic control in subjects with type 1 diabetes mellitus with sensor-augmented insulin pump therapy.

Detailed Description

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Background

For individuals with type 1 diabetes (T1D) the current gold standard to evaluate the carbohydrate (CHO) amount of a meal is by carefully weighing its different components and calculating the CHO content using reference nutritional tables. The resulting CHO amount is then used to define the insulin dose needed to avoid an abnormal postprandial glucose profile. Since this is a cumbersome procedure in real life, diabetic individuals often estimate the CHO amount based on their personal experience. Especially for food served on a plate CHO estimates are often significantly over or underestimated leading to high variation in postprandial blood glucose. Besides the immediate risk of hypoglycaemia, there is emerging evidence that suboptimal control of postprandial glucose is affiliated with increased risk for long-term complications (e.g. diabetic micro- and macro-vascular diseases).

The effect of CHO counting in T1D control has been increasingly recognized and investigated. A meta-analysis including five studies on individuals with T1D has shown, that improved CHO counting accuracy reduces the HbA1c significantly (0.64% reduction in HbA1c compared to a control group). Teaching adult individuals with T1D to count CHO reduces HbA1c significantly and also leads to an improvement in quality of life. Similar findings are reported in children, in whom higher CHO counting accuracy is associated with a lower HbA1c. Even a short educational intervention of 4 weeks can still result in a significant and sustained effect on HbA1c reduction 9 months after without having an increase in hypoglycaemia. Lower CHO counting accuracy is a significant predictor of prolonged time in hyperglycaemic state. In one study with adults only 31% of the participants estimated the CHO content with an error of less than 20 grams per day and accurate CHO estimation were correlated with the lowest HbA1c values. In line with these findings another study has shown that individuals on intensive insulin therapy count CHO content of meals with an average error in the order of 16 grams or 21%. In general there is overestimation of small meals and a substantial underestimation of large meals. While breakfast (+8.5%) and snacks (-5%) were estimated fairly accurately, lunch (-28%) and dinner (-23%) are more prone to errors leading to an underestimation in the order of 30 grams. In children, an inaccuracy of ±10grams does not deteriorate the postprandial glycaemic control, whereas a ±20 grams variation significantly impacts the postprandial glycaemia.

The debate how to optimally estimate CHO intake is on-going and controversial. Fact is that even well trained diabetic individuals find it difficult to estimate CHO precisely and that especially meals served on a plate are prone to false estimations underlining an emergent need for novel approaches to CHO estimation. The investigators hypothesize that computer vision supported CHO estimation can have a beneficial impact on postprandial glucose control, ultimately leading to reduced episodes of hypoglycaemia and reduction in long term complications.

The recent advances in smartphone technologies and computer vision permitted the development of applications for the automatic dietary assessment through meal image analysis. The applications are using either a number of images or a short video of the upcoming meal, as captured by the user's smartphone. Although several systems have been proposed in the past decade, none of them is designed for individuals with diabetes, while they rely on strong assumptions, which often do not hold in real life, or require too much user input. The GoCARB system provides CHO estimations to individuals with T1D, by using only two meal images. The current version GoCARB has been designed to deal with

* elliptical plates with a flat base;
* single-dish images;
* fully visible food items. The system works without assumptions on the food shape, while it supports the following food classes: Pasta, green salad, meat, breaded food, beans, carrots, mashed potato, rice, potatoes, bread, cheese, egg, couscous, mushrooms and spätzli.

Objective

The purpose of this study is to investigate the effect of GoCARB-supported CHO estimation in the postprandial glucose control of individuals with T1D on sensor augmented insulin pump therapy.

In a typical scenario, the user places a credit card-sized reference object next to the meal and acquires two images using her/his smartphone. A graphical user interface guides the user in choosing the optimal angles for image acquisition based on the smartphone's built-in sensors. The images are then transmitted to a dedicated server via Wi-Fi or the mobile network. Then, the following computer vision algorithms are activated: the plate is detected and the different food items on the plate are automatically segmented and recognized, while their 3D shape is reconstructed. On the basis of the shape, the segmentation results and the reference card, the volume and CHO content of each item is then calculated by combining the food types with its volumes. Finally, the results are displayed to the user.

Methods

This study's overall objective is to perform a prospective randomized controlled clinical pilot study comparing postprandial glucose control assisted by the GoCARB system against the usual care approach by the participants. Scope of the study will be to investigate whether the postprandial glucose profile is improved by using the GoCARB prototype for CHO estimation. Postprandial glycaemia is evaluated using continuous glucose monitoring.

Conditions

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Diabetes Mellitus, Type 1 Carbohydrates

Study Design

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Allocation Method

RANDOMIZED

Intervention Model

CROSSOVER

Blinding Strategy

NONE

Study Groups

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GoCARB app

Smartphone app

Group Type OTHER

Smartphone App

Intervention Type OTHER

The GoCARB system is a smartphone application designed to support type 1 diabetic patients with carbohydrate counting by providing automatic, accurate and near real-time CHO estimation for non-packed foods.

Conventional carbohydrate estimating methods

Individual usual carbohydrate estimation methods (weighing, experience, carbohydrate exchange tables etc.).

Group Type NO_INTERVENTION

No interventions assigned to this group

Interventions

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Smartphone App

The GoCARB system is a smartphone application designed to support type 1 diabetic patients with carbohydrate counting by providing automatic, accurate and near real-time CHO estimation for non-packed foods.

Intervention Type OTHER

Eligibility Criteria

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Inclusion Criteria

* Type 1 diabetes
* Minimum age of 18 years old
* Sensor-augmented pump therapy for at least six months
* HbA1c levels within the last 4 months ≤ 8.5%
* Familiar with carbohydrate (CHO) counting (e.g. CHO counting training in the past)
* Normal insulin sensitivity (reflected by a daily insulin requirement of 0.3-1.0 U/kg body weight)
* Able to comprehend German or English
* Written informed consent

Exclusion Criteria

* Relevant diabetic complications
* Hypoglycemia unawareness
* More than one episode of severe hypoglycemia as defined by American Diabetes Association in preceding 12 months
* Pregnancy
* Relevant psychiatric disorder
* Active neoplasia
* Participation in another study
* Other individuals especially in need of protection (according to the guidelines of the Swiss Academy of Medical Sciences)
Minimum Eligible Age

18 Years

Eligible Sex

ALL

Accepts Healthy Volunteers

No

Sponsors

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Insel Gruppe AG, University Hospital Bern

OTHER

Sponsor Role lead

Responsible Party

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Responsibility Role SPONSOR

Principal Investigators

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Christoph Stettler

Role: PRINCIPAL_INVESTIGATOR

Division of Endocrinology, Diabetes and Clinical Nutrition, Bern University Hospital

Stavroula Mougiakakou

Role: PRINCIPAL_INVESTIGATOR

Diabetes Technology Research Group, ARTORG Center for Biomedical Engineering Research, University of Bern

Markus Laimer

Role: PRINCIPAL_INVESTIGATOR

Division of Endocrinology, Diabetes and Clinical Nutrition, Bern University Hospital

Locations

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Division of Endocrinology, Diabetes and Clinical Nutrition, Bern University Hospital

Bern, , Switzerland

Site Status

Countries

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Switzerland

References

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Anthimopoulos MM, Gianola L, Scarnato L, Diem P, Mougiakakou SG. A food recognition system for diabetic patients based on an optimized bag-of-features model. IEEE J Biomed Health Inform. 2014 Jul;18(4):1261-71. doi: 10.1109/JBHI.2014.2308928.

Reference Type BACKGROUND
PMID: 25014934 (View on PubMed)

Agianniotis A, Anthimopoulos M, Daskalaki E, Drapela A, Stettler C, Diem P, Mougiakakou S. GoCARB in the Context of an Artificial Pancreas. J Diabetes Sci Technol. 2015 May;9(3):549-55. doi: 10.1177/1932296815583333. Epub 2015 Apr 21.

Reference Type RESULT
PMID: 25904142 (View on PubMed)

Anthimopoulos M, Dehais J, Shevchik S, Ransford BH, Duke D, Diem P, Mougiakakou S. Computer vision-based carbohydrate estimation for type 1 patients with diabetes using smartphones. J Diabetes Sci Technol. 2015 May;9(3):507-15. doi: 10.1177/1932296815580159. Epub 2015 Apr 16.

Reference Type RESULT
PMID: 25883163 (View on PubMed)

Bally L, Dehais J, Nakas CT, Anthimopoulos M, Laimer M, Rhyner D, Rosenberg G, Zueger T, Diem P, Mougiakakou S, Stettler C. Carbohydrate Estimation Supported by the GoCARB System in Individuals With Type 1 Diabetes: A Randomized Prospective Pilot Study. Diabetes Care. 2017 Feb;40(2):e6-e7. doi: 10.2337/dc16-2173. Epub 2016 Nov 29. No abstract available.

Reference Type DERIVED
PMID: 27899490 (View on PubMed)

Other Identifiers

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100/15

Identifier Type: -

Identifier Source: org_study_id

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