In this paper a data-driven fault detection technique based on parity space is applied to the problem of detecting unannounced meals for type 1 diabetes patients. This method involves the generation and evaluation of a residual signal to detect faults (unannounced meals) acting on the system (patient). Insulin on Board (IOB), meal intake, glucose and its second derivative have been selected as input signals to generate the residuals, and the parity space matrices are estimated using 8-hour training in silico data generated by the UVA/Padova simulator. The residual evaluation module compares the residual with a threshold that is optimized for each patient using 2-day tuning data. The complete system is evaluated on 1-week scenario obtaining promising results (TPR =9 5 %, PPV=7 2 %) with a detection delay of 4 2 minutes for 8 0 % of patients. For the 20 outlier patients, a fine-tuning and patient-tailored input signal processing are proposed as a future development.

(2024). A meal detection approach based on parity space to detect untreated meals in subjects with Type 1 diabetes* . Retrieved from https://hdl.handle.net/10446/296785

A meal detection approach based on parity space to detect untreated meals in subjects with Type 1 diabetes*

Mazzoleni, Mirko;Ferramosca, Antonio;
2024-01-01

Abstract

In this paper a data-driven fault detection technique based on parity space is applied to the problem of detecting unannounced meals for type 1 diabetes patients. This method involves the generation and evaluation of a residual signal to detect faults (unannounced meals) acting on the system (patient). Insulin on Board (IOB), meal intake, glucose and its second derivative have been selected as input signals to generate the residuals, and the parity space matrices are estimated using 8-hour training in silico data generated by the UVA/Padova simulator. The residual evaluation module compares the residual with a threshold that is optimized for each patient using 2-day tuning data. The complete system is evaluated on 1-week scenario obtaining promising results (TPR =9 5 %, PPV=7 2 %) with a detection delay of 4 2 minutes for 8 0 % of patients. For the 20 outlier patients, a fine-tuning and patient-tailored input signal processing are proposed as a future development.
2024
Inglese
Proceedings of: 2024 IEEE 63rd Conference on Decision and Control (CDC)
9798350316339
1307
1312
online
United States
IEEE
CDC 2024: IEEE 63rd Conference on Decision and Control, Milano, Italy, 16-19 Dicembre 2024
63
Milano (Italy)
16-19 Dicembre 2024
internazionale
contributo
Settore IINF-04/A - Automatica
   ANTHEM - AdvaNced Technologies for Human-centrEd Medicine
   ANTHEM
   MUR - MINISTERO DELL'UNIVERSITA' E DELLA RICERCA - Segretariato generale Direzione generale della ricerca - Ufficio IV
info:eu-repo/semantics/conferenceObject
5
Mongini, Paolo Alberto; Mazzoleni, Mirko; Ferramosca, Antonio; Magni, Lalo; Toffanin, Chiara
1.4 Contributi in atti di convegno - Contributions in conference proceedings::1.4.01 Contributi in atti di convegno - Conference presentations
reserved
Non definito
273
(2024). A meal detection approach based on parity space to detect untreated meals in subjects with Type 1 diabetes* . Retrieved from https://hdl.handle.net/10446/296785
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