Assisting the implementation of screening for type 1 diabetes by using artificial intelligence on publicly available data

Research output: Contribution to journalJournal articleResearchpeer-review

Standard

Assisting the implementation of screening for type 1 diabetes by using artificial intelligence on publicly available data. / Teixeira, Pedro F.; Battelino, Tadej; Carlsson, Anneli; Gudbjörnsdottir, Soffia; Hannelius, Ulf; von Herrath, Matthias; Knip, Mikael; Korsgren, Olle; Elding Larsson, Helena; Lindqvist, Anton; Ludvigsson, Johnny; Lundgren, Markus; Nowak, Christoph; Pettersson, Paul; Pociot, Flemming; Sundberg, Frida; Åkesson, Karin; Lernmark, Åke; Forsander, Gun.

In: Diabetologia, Vol. 67, No. 6, 2024, p. 985-994.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Teixeira, PF, Battelino, T, Carlsson, A, Gudbjörnsdottir, S, Hannelius, U, von Herrath, M, Knip, M, Korsgren, O, Elding Larsson, H, Lindqvist, A, Ludvigsson, J, Lundgren, M, Nowak, C, Pettersson, P, Pociot, F, Sundberg, F, Åkesson, K, Lernmark, Å & Forsander, G 2024, 'Assisting the implementation of screening for type 1 diabetes by using artificial intelligence on publicly available data', Diabetologia, vol. 67, no. 6, pp. 985-994. https://doi.org/10.1007/s00125-024-06089-5

APA

Teixeira, P. F., Battelino, T., Carlsson, A., Gudbjörnsdottir, S., Hannelius, U., von Herrath, M., Knip, M., Korsgren, O., Elding Larsson, H., Lindqvist, A., Ludvigsson, J., Lundgren, M., Nowak, C., Pettersson, P., Pociot, F., Sundberg, F., Åkesson, K., Lernmark, Å., & Forsander, G. (2024). Assisting the implementation of screening for type 1 diabetes by using artificial intelligence on publicly available data. Diabetologia, 67(6), 985-994. https://doi.org/10.1007/s00125-024-06089-5

Vancouver

Teixeira PF, Battelino T, Carlsson A, Gudbjörnsdottir S, Hannelius U, von Herrath M et al. Assisting the implementation of screening for type 1 diabetes by using artificial intelligence on publicly available data. Diabetologia. 2024;67(6):985-994. https://doi.org/10.1007/s00125-024-06089-5

Author

Teixeira, Pedro F. ; Battelino, Tadej ; Carlsson, Anneli ; Gudbjörnsdottir, Soffia ; Hannelius, Ulf ; von Herrath, Matthias ; Knip, Mikael ; Korsgren, Olle ; Elding Larsson, Helena ; Lindqvist, Anton ; Ludvigsson, Johnny ; Lundgren, Markus ; Nowak, Christoph ; Pettersson, Paul ; Pociot, Flemming ; Sundberg, Frida ; Åkesson, Karin ; Lernmark, Åke ; Forsander, Gun. / Assisting the implementation of screening for type 1 diabetes by using artificial intelligence on publicly available data. In: Diabetologia. 2024 ; Vol. 67, No. 6. pp. 985-994.

Bibtex

@article{1717d2e4398044a4b650f2dfaec6d9d1,
title = "Assisting the implementation of screening for type 1 diabetes by using artificial intelligence on publicly available data",
abstract = "The type 1 diabetes community is coalescing around the benefits and advantages of early screening for disease risk. To be accepted by healthcare providers, regulatory authorities and payers, screening programmes need to show that the testing variables allow accurate risk prediction and that individualised risk-informed monitoring plans are established, as well as operational feasibility, cost-effectiveness and acceptance at population level. Artificial intelligence (AI) has the potential to contribute to solving these issues, starting with the identification and stratification of at-risk individuals. ASSET (AI for Sustainable Prevention of Autoimmunity in the Society; www.asset.healthcare) is a public/private consortium that was established to contribute to research around screening for type 1 diabetes and particularly to how AI can drive the implementation of a precision medicine approach to disease prevention. ASSET will additionally focus on issues pertaining to operational implementation of screening. The authors of this article, researchers and clinicians active in the field of type 1 diabetes, met in an open forum to independently debate key issues around screening for type 1 diabetes and to advise ASSET. The potential use of AI in the analysis of longitudinal data from observational cohort studies to inform the design of improved, more individualised screening programmes was also discussed. A key issue was whether AI would allow the research community and industry to capitalise on large publicly available data repositories to design screening programmes that allow the early detection of individuals at high risk and enable clinical evaluation of preventive therapies. Overall, AI has the potential to revolutionise type 1 diabetes screening, in particular to help identify individuals who are at increased risk of disease and aid in the design of appropriate follow-up plans. We hope that this initiative will stimulate further research on this very timely topic. Graphical Abstract: (Figure presented.)",
keywords = "AI, Artificial intelligence, ASSET, Children, Precision medicine, Prevention, Screening, Type 1 diabetes",
author = "Teixeira, {Pedro F.} and Tadej Battelino and Anneli Carlsson and Soffia Gudbj{\"o}rnsdottir and Ulf Hannelius and {von Herrath}, Matthias and Mikael Knip and Olle Korsgren and {Elding Larsson}, Helena and Anton Lindqvist and Johnny Ludvigsson and Markus Lundgren and Christoph Nowak and Paul Pettersson and Flemming Pociot and Frida Sundberg and Karin {\AA}kesson and {\AA}ke Lernmark and Gun Forsander",
note = "Publisher Copyright: {\textcopyright} The Author(s) 2024.",
year = "2024",
doi = "10.1007/s00125-024-06089-5",
language = "English",
volume = "67",
pages = "985--994",
journal = "Diabetologia",
issn = "0012-186X",
publisher = "Springer",
number = "6",

}

RIS

TY - JOUR

T1 - Assisting the implementation of screening for type 1 diabetes by using artificial intelligence on publicly available data

AU - Teixeira, Pedro F.

AU - Battelino, Tadej

AU - Carlsson, Anneli

AU - Gudbjörnsdottir, Soffia

AU - Hannelius, Ulf

AU - von Herrath, Matthias

AU - Knip, Mikael

AU - Korsgren, Olle

AU - Elding Larsson, Helena

AU - Lindqvist, Anton

AU - Ludvigsson, Johnny

AU - Lundgren, Markus

AU - Nowak, Christoph

AU - Pettersson, Paul

AU - Pociot, Flemming

AU - Sundberg, Frida

AU - Åkesson, Karin

AU - Lernmark, Åke

AU - Forsander, Gun

N1 - Publisher Copyright: © The Author(s) 2024.

PY - 2024

Y1 - 2024

N2 - The type 1 diabetes community is coalescing around the benefits and advantages of early screening for disease risk. To be accepted by healthcare providers, regulatory authorities and payers, screening programmes need to show that the testing variables allow accurate risk prediction and that individualised risk-informed monitoring plans are established, as well as operational feasibility, cost-effectiveness and acceptance at population level. Artificial intelligence (AI) has the potential to contribute to solving these issues, starting with the identification and stratification of at-risk individuals. ASSET (AI for Sustainable Prevention of Autoimmunity in the Society; www.asset.healthcare) is a public/private consortium that was established to contribute to research around screening for type 1 diabetes and particularly to how AI can drive the implementation of a precision medicine approach to disease prevention. ASSET will additionally focus on issues pertaining to operational implementation of screening. The authors of this article, researchers and clinicians active in the field of type 1 diabetes, met in an open forum to independently debate key issues around screening for type 1 diabetes and to advise ASSET. The potential use of AI in the analysis of longitudinal data from observational cohort studies to inform the design of improved, more individualised screening programmes was also discussed. A key issue was whether AI would allow the research community and industry to capitalise on large publicly available data repositories to design screening programmes that allow the early detection of individuals at high risk and enable clinical evaluation of preventive therapies. Overall, AI has the potential to revolutionise type 1 diabetes screening, in particular to help identify individuals who are at increased risk of disease and aid in the design of appropriate follow-up plans. We hope that this initiative will stimulate further research on this very timely topic. Graphical Abstract: (Figure presented.)

AB - The type 1 diabetes community is coalescing around the benefits and advantages of early screening for disease risk. To be accepted by healthcare providers, regulatory authorities and payers, screening programmes need to show that the testing variables allow accurate risk prediction and that individualised risk-informed monitoring plans are established, as well as operational feasibility, cost-effectiveness and acceptance at population level. Artificial intelligence (AI) has the potential to contribute to solving these issues, starting with the identification and stratification of at-risk individuals. ASSET (AI for Sustainable Prevention of Autoimmunity in the Society; www.asset.healthcare) is a public/private consortium that was established to contribute to research around screening for type 1 diabetes and particularly to how AI can drive the implementation of a precision medicine approach to disease prevention. ASSET will additionally focus on issues pertaining to operational implementation of screening. The authors of this article, researchers and clinicians active in the field of type 1 diabetes, met in an open forum to independently debate key issues around screening for type 1 diabetes and to advise ASSET. The potential use of AI in the analysis of longitudinal data from observational cohort studies to inform the design of improved, more individualised screening programmes was also discussed. A key issue was whether AI would allow the research community and industry to capitalise on large publicly available data repositories to design screening programmes that allow the early detection of individuals at high risk and enable clinical evaluation of preventive therapies. Overall, AI has the potential to revolutionise type 1 diabetes screening, in particular to help identify individuals who are at increased risk of disease and aid in the design of appropriate follow-up plans. We hope that this initiative will stimulate further research on this very timely topic. Graphical Abstract: (Figure presented.)

KW - AI

KW - Artificial intelligence

KW - ASSET

KW - Children

KW - Precision medicine

KW - Prevention

KW - Screening

KW - Type 1 diabetes

U2 - 10.1007/s00125-024-06089-5

DO - 10.1007/s00125-024-06089-5

M3 - Journal article

C2 - 38353727

AN - SCOPUS:85185118015

VL - 67

SP - 985

EP - 994

JO - Diabetologia

JF - Diabetologia

SN - 0012-186X

IS - 6

ER -

ID: 383923809