Abstract
Purpose
To analyze the time in tight range (TITR), and its relationship with other glucometric parameters in patients with type 1 diabetes (T1D) treated with advanced hybrid closed-loop (AHCL) systems.
Methods
A prospective observational study was conducted on pediatric and adult patients with T1D undergoing treatment with AHCL systems for at least 3 months. Clinical variables and glucometric parameters before and after AHCL initiation were collected.
Results
A total of 117 patients were evaluated. Comparison of metabolic control after AHCL initiation showed significant improvements in HbA1c (6.9 ± 0.9 vs. 6.6 ± 0.5%, p < 0.001), time in range (TIR) (68.2 ± 11.5 vs. 82.5 ± 6.9%, p < 0.001), TITR (43.7 ± 10.8 vs. 57.3 ± 9.7%, p < 0.001), glucose management indicator (GMI) (6.9 ± 0.4 vs. 6.6 ± 0.3%, p < 0.001), time below range (TBR) 70–54 mg/dl (4.3 ± 4.5 vs. 2.0 ± 1.4%, p < 0.001), and time above range (TAR) > 180 mg/dl (36.0 ± 7.6 vs. 15.1 ± 6.4%, p < 0.001). Coefficient of variation (CV) also improved (36.3 ± 5.7 vs. 30.6 ± 3.7, p < 0.001), while time between 140–180 mg/dl remained unchanged. In total, 76.3% achieved TITR > 50% (100% pediatric). Correlation analysis between TITR and TIR and GRI showed a strong positive correlation, modified by glycemic variability.
Conclusions
AHCL systems achieve significant improvements in metabolic control (TIR > 70% in 93.9% patients). The increase in TIR was not related to an increase in TIR 140–180 mg/dl. Despite being closely related to TIR, TITR allows for a more adequate discrimination of the achieved control level, especially in a population with good initial metabolic control. The correlation between TIR and TITR is directly influenced by the degree of glycemic variability.
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Introduction
In the last century, there have been continuous advances in the treatment of diabetes, with technological advancements gaining special relevance in recent decades. One of the most notable technological milestones is the interstitial glucose monitoring (IGM), which can be considered the most advanced method for monitoring glucose levels in individuals with type 1 diabetes (T1D), recently extending its recommendation to patients with type 2 diabetes (T2D) [1]. The use of IGM is widespread and has brought about a shift in the way diabetes is monitored and understood. Since the introduction of IGM, glucose metric parameters have been established to define the glycemic control of patients with diabetes, previously only defined by HbA1c and capillary blood glucose measurements (SMBG) [2]. The International Consensus on Continuous Glucose Monitoring (CGM) introduced concepts now widely used, such as time in range (TIR), time below range (TBR), time above range (TAR), average glucose, standard deviation (SD), and coefficient of variation (CV) [2]. Subsequently, the International TIR Consensus set control goals for these parameters based on the type of diabetes [3]. In contrast with HbA1c conventional measure, TIR provides a measure of dispersion and allows differentiation between individuals with high and low glucose variability, even when HbA1c levels are similar [4, 5]. The use of TIR has become widespread, but there are doubts about whether it will replace HbA1c, which has been the gold standard for many decades, with studies correlating its levels and the long-term risk of complications [6].
Within this technological advance in diabetes, the integration of CGM with insulin pumps has led to the emergence of advanced hybrid closed-loop systems (AHCL), which have achieved a significant improvement in metabolic control and quality of life for both pediatric and adult patients with T1D [7,8,9,10,11,12,13]. Numerous studies have demonstrated their efficacy in treating T1D [7,8,9,10,11,12,13].
In recent years, new glucose metric parameters have emerged based on the use of these systems, attempting to address the limitations of previous metrics. One of these is the glucose risk index (GRI), described in 2022 [14]. This new parameter aims to summarize the overall quality of glycemic control for a specific patient in a single figure, simplifying data analysis [14,15,16]. Another recently introduced and increasingly important metric is the time in tight range (TITR), representing a narrower and more physiological range between 70 and 140 mg/dl. Since the TIR consensus of 2019, there has been discussion regarding the need to adjust glucose ranges, as the glucose ranges and treatment goals were determined through consensus efforts to align with definitions used before the introduction of CGM but were not based on clinical outcomes [3]. Thus, the therapeutic goal of an HbA1c < 7% was equated to spending 70% in the range of 70–180 mg/dl [3]. However, studies showed that individuals without diabetes spend 96% of their time between 70 and 140 mg/dl, rarely reaching levels between 140 and 180 mg/dl, and if they do, it is only for a short period after meals [17, 18]. Based on this, some authors have proposed that TITR may better reflect the CGM metrics of euglycemia, and the first TITR studies have already been published, with some of them indicating desirable TITR goals to define good metabolic control and establishing equivalencies between TITR levels and HbA1c figures [19, 20].
The objective of this study was to analyze the utility and evolution of TITR and its relationship with other glucose metric parameters in patients with T1D (both adults and pediatric) undergoing treatment with AHCL systems, receiving follow-up in a tertiary hospital.
Material and methods
This study was a prospective observational study involving 117 adult and pediatric patients with T1D undergoing intensive insulin treatment with the Medtronic MiniMed-780G (MM780G) AHCL system at a tertiary hospital. All the patients included in the study participated in an educational program of 3–5 sessions (depending on the previous system used) in which they were instructed about the ACHL system working. Clinical and metabolic control data were collected, and information on system usage and metabolic control was assessed through the data analysis obtained from the Carelink System and Libreview software programs. All patients with T1D and this AHCL system with a scheduled appointment in 2023 were consecutively enrolled, excluding those using the AHCL system less than 3 months or less than 1 year since the onset of DM1. None of the patients met the exclusion criteria. Clinical characteristics and baseline metabolic control status were collected prior to initiating AHCL MM780G treatment. Subsequently, treatment was changed to AHCL MM780G, and metabolic control data were collected during visits conducted in 2023, provided there was at least 3 months of device usage. Metabolic control evaluation involved analyzing glucometric data from device downloads in the 14 days preceding the patient visits.
Glucometric data included mean glucose (mg/dl), glucose management indicator (GMI) (%), TIR (% of time with glucose levels between 70 and 180 mg/dl), TAR (% of time above 180 mg/dl), and TBR (% of time below 70 mg/dl). Glycemic variability was assessed through the CV (%) and SD (mg/dl). TAR and TBR were further classified into very low glycemia level (<54 mg/dL), low glycemia level (54–70 mg/dL), high glycemia level (181–250 mg/dL), and very high glycemia level (>250 mg/dL). Additionally, TITR (% of time between 70 and 140 mg/dl) and time between 140 and 180 mg/dl were calculated, as well as GRI as previously described [15]. Data on the use of AHCL (time in AHCL), total insulin dose, insulin boluses dose and sensor usage percentage were also collected. A comparative analysis was conducted for all these parameters before and after the initiation of the AHCL system.
Statistical analysis was conducted, and the results were expressed as mean ± standard deviation (mean ± SD). The normal distribution of variables was assessed using the Kolmogorov–Smirnov test. Quantitative variables with normal distribution were analyzed using a two-tailed t-Student test, while non-parametric variables were evaluated with the Mann–Whitney U test. Categorical variables were assessed using the chi-square test or Fisher exact test when necessary. Pearson’s linear correlation coefficient was used to analyze the association of quantitative variables. Finally, a multiple linear regression model was employed, with pediatric/adult status, gender, AHCL duration, GMI, CV, time in AHCL, sensor usage, and TIR as independent variable and TITR as the dependent variable. P values < 0.05 were considered significant. SPSS 23.0 (SPSS Inc., Chicago, IL, USA) was used for data analysis.
All patients signed an informed consent for their inclusion before participating in the study. The protocol was approved by the Clinical Research Ethics Committee of our Institution (PI 23-3134), and the study was conducted in accordance with the Declaration of Helsinki.
Results
A total of 117 patients (66% females) were evaluated, including 44 pediatric patients (under 18 years old). Flash glucose monitoring (FGM) was used by 93.2% of the participants, and 82.9% used subcutaneous insulin infusion system (CSII) before transitioning to MM780G AHCL system. Among adults, 9.6% used Medtronic Minimed-670G, and 90.4% used CSII (Medtronic Minimed-640G) with FGM before starting MM780G AHCL system. In the pediatric population, 45.5% received treatment with multiple daily insulin doses (MDI) before transitioning to AHCL, while the rest used Medtronic Minimed-670G (13%) or Medtronic Minimed-640G with FGM (41.5%). The mean age in adults was 44.1 ± 12.6 years, and in pediatric population was 12.77 ± 3.47 years. The mean duration from the start of treatment with the MM780G AHCL system to data analysis was 15.2 ± 9.9 months. In total, 76.1% of the analyzed population had the optimal configuration of the device (MM780G AHCL system): 100 mg/dL target and 2 h of active insulin (see Table 1 for descriptive information).
A comparative study was conducted between glucometric results before and after the initiation of the MM780G AHCL system, with a 3-month minimum usage. Significant improvements were observed in HbA1c (6.9 ± 0.9 vs. 6.6 ± 0.5%, p < 0.001), TIR (68.2 ± 11.5 vs. 82.5 ± 6.9%, p < 0.001), TITR (43.7 ± 10.8 vs. 57.3 ± 9.7%, p < 0.001), GMI (6.9 ± 0.4 vs. 6.6 ± 0.3%, p < 0.001), TBR70–54 mg/dl (4.3 ± 4.5 vs. 2.0 ± 1.4%, p < 0.001), TAR > 180 mg/dl (36.0 ± 7.6 vs. 15.1 ± 6.4%, p < 0.001), and CV (36.3 ± 5.7 vs. 30.6 ± 3.7, p < 0.001). The time between 140 and 180 mg/dl remained stable (24.6 ± 6.0 vs. 24.9 ± 5.6, ns) (Table 1). This improvement remained consistent when stratifying by pediatric and adult age groups, with pediatric patients exhibiting better metabolic control for TIR (86.0 ± 4.7 vs. 79.5 ± 7.6%, p < 0.001) and TITR (62.7 ± 6.4 vs. 53.7 ± 9.9%, p < 0.001) (Table 2).
Analyzing the entire sample, 76.3% patients achieved TITR > 50%. However, when considering only the pediatric population, 100% pediatric patients achieved TITR > 50%, compared to 62.5% in the adult population (p < 0.001). For TIR > 70%, 93.9% patients reached this goal, with 100% pediatric population and 90.3% adult population achieving it (p < 0.001) as well.
Correlating TITR with TIR revealed a strong positive correlation (r = 0.849, p < 0.001) and GRI (r = 0.647, p < 0.001), similar in both pediatric and adult populations (Fig. 1). Analyzing the relationship between TIR and TITR and glycemic variability assessed by CV showed that patients with higher variability (CV > 36%) a TIR = 70% corresponded to TITR of 47.9%, compared to those with CV < 36% where a TIR of 70% corresponded to TITR = 42.0%.
In a multivariate analysis evaluating the relationship with TITR among other variables (pediatric/adult status, gender, AHCL duration, GMI, CV, time in AHCL, sensor usage, and TIR), only TIR, CV, and GMI maintained statistical significance (Table 3).
Discussion
The present study demonstrates that treatment with AHCL MM780G system in patients with T1D, both pediatric and adults, improves metabolic control as previously described in prior studies [7,8,9,10,11,12,13]. Moreover, this improvement in metabolic control is primarily attributable to an increase in TITR, a recently introduced metric reflecting time spent in euglycemia with limited existing literature, without a change in time spent between 140 and 180 mg/dl. Additionally, we observed a clear correlation between the coefficient of variation (CV) and the relationship between TIR and TITR.
In recent years, the effectiveness of AHCL systems for the treatment of T1D patients, both pediatric and adult, has been demonstrated, leading to a noticeable improvement in their metabolic control [7,8,9,10,11,12,13]. It has been established that a TIR > 70% is synonymous with good metabolic control in T1D patients. Studies are now beginning to correlate TIR with macro and microvascular complications, similar to HbA1c levels [21,22,23,24]. A new metric, TITR, has been introduced, focusing on a narrower and more physiological range, which is the primary analysis goal in our study. The incorporation of TITR addresses the discussion regarding the need to adjust glucose ranges to values closer to euglycemia, especially considering the significant improvement in glycemic control experienced by individuals with T1D receiving AHCL system treatment. The therapeutic goal of achieving an HbA1c < 7% has been equated to TIR 70%. Some authors propose that TITR may better reflect normal glucose values, with initial studies attempting to establish desirable TITR goals and equivalence between TITR levels and HbA1c figures [19,20,21].
Our study shows that treatment with AHCL systems results in significant metabolic control improvements for both pediatric and adult patients, assessed not only through TIR but also TITR. The enhancement of metabolic control with AHCL systems, compared to previous treatments, is evident in both HbA1c levels and conventional glucose parameters in our study. Indeed, 93.9% patients achieved a TIR > 70%, considered a parameter for good metabolic control in T1D patients, with 100% pediatric patients achieving this. These results align with the literature, showing an improvement in TIR with a decrease in TBR and TAR, and a betterment in HbA1c levels after initiating treatment with various AHCL systems [7,8,9,10,11,12,13].
The main finding of our study is that the improvement in metabolic control with the implementation of AHCL systems primarily occurs due to an increase in TITR, without a corresponding increase in time between 140 and 180 mg/dl, as described by Castañeda et al. [20]. Therefore, treatment with the MM780G AHCL system brings about improvement mainly in time spent in euglycemia, a relevant and significant result not described so far. Our study supports TITR use as a new glucose metric that allows for a more accurate discrimination of the achieved control level, especially in a population with initially good metabolic control and elevated TIR, despite the strong correlation between both parameters.
Although the TITR target is not yet established, it is widely accepted that a high TITR is desirable. A TITR goal > 50% is considered a reasonable and safe treatment target for individuals living with T1D, with higher TITR values being preferable [19, 20]. Peterson et al. established that a 50% TITR corresponds to an HbA1c level of 6.5% [19]. Similarly, Castañeda et al. aim to define TITR levels as treatment goals for individuals with T1D, suggesting that a TITR over 45% has the greatest potential to accurately determine if users achieve an HbA1c below 7% [20]. These authors also state that TITR over 50% is optimal for classifying an GMI below 6.8%, and TITR over 55% is optimal for GMI below 6.5% [20]. Although a TITR over 50% can be considered a reasonable and safe goal for treatment targets in individuals living with T1D, Castañeda et al. showed that a goal exceeding 55% could be reasonably achieved in MM780G AHCL system users if optimal system settings are applied (target 100 mg/dL, insulin duration 2 h). These optimal settings were recorded in 76.1% of our study population.
In our study, metabolic control was better in pediatric population, with an average TITR 62.7 ± 6.4% compared to 53.7 ± 9.9% in adults after starting AHCL. This aligns with Beck et al., who reported an average TITR 53% vs. 32% in non-AHCL users in a mixed population (pediatric and adults) [25]. Castañeda et al. [20] describe that with the use of MM780G AHCL system, TITR significantly increased in both pediatric and adult populations, with an absolute TITR increase of 11.7 ± 10.8% (from 37.2 ± 14.3% to 48.9 ± 9.6%) and 11.6 ± 10.2% (from 37.2 ± 13.6% to 48.8 ± 10.9%), respectively, in each group. Simultaneously, there was a TIR increase of approximately the same magnitude [20]. Therefore, the TITR values described are lower than ours, especially in the younger population [25].
A TITR over 50% was achieved by 76.3% of our patients. When specifically analyzing the pediatric population, 100% pediatric patients achieved a TITR over 50%, in contrast with adult population where only a lower percentage (62.5%) reached this threshold. Nevertheless, Castañeda et al. describe that over 90% users reached a TITR over 45%, considering it a high percentage, similar to what our work considers [20]. Comparing our results with Panassini’s et al. [26], in a study conducted exclusively in pediatric population, the average TITR described is clearly lower than ours (36.4 ± 12.8%). Although this average corresponds to patients with different treatments, they describe a higher TITR in users of AHCL systems where the TITR was 45 ± 11.2%, a percentage clearly lower than that obtained in our pediatric population [26]. On the other hand, the percentage of participants achieving TITR over 50% in the AHCL group was significantly lower than in ours (34.3%).
TITR shows a close correlation with TIR and CV, as shown recently [25] The correlation between TITR and GRI was recently described [15]. The multivariate analysis conducted in our study shows that only TIR, CV and GMI maintained statistical significance with TITR. The influence of glucose variability, not directly included in TITR or TIR, has been described for both variables, partly due to the dependence of CV calculation on mean glucose. However, our study suggests that the TITR target of 50% could be adjusted based on individual glucose variability. In other words, higher CV leads to a higher TITR for a given TIR, just as greater variability for a specific TITR results in lower TIR. This was previously described by Beck et al., who reported that higher CV, and in turn, higher TBR lead to a higher TITR for a given TIR [25]. TBR should also be considered in this relationship between TIR and TITR, as noted by Becks et al., who found differences in the TIR and TITR relationship in patients with T1D and T2D, with a higher TITR for a given TIR in T1D patients [25]. These differences are attributable to higher variability and TBR in T1D patients, and in fact, the differences in the TIR and TITR relationship between both populations disappeared when adjusted for CV or TBR [25].
One of the limitations of our study is the smaller sample size compared to other studies carried out with the same AHCL system. However, it is important to highlight as strengths that, unlike studies with a larger we have real clinical data and an accurate diagnosis of the included patients, sample size, as well as HbA1c data, allowing for an exhaustive comparison of the before and after conditions upon initiating treatment with AHCL systems.
In conclusion, our study highlights that AHCL systems achieve significant improvements in metabolic control with TIR > 70% in 100% pediatric patients, primarily through increases in TITR and, consequently, time spent in euglycemia. Therefore, TITR may be a more suitable target for patients undergoing AHCL system treatment, indicating improved metabolic control. The emerging role of TITR as a key metric for evaluating glucose control in individuals with diabetes may be closely linked to a careful interpretation of CV levels in both research studies and daily clinical practice. Further studies are needed to evaluate short- and long-term outcomes of using TITR as a metric.
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All authors contributed to the study conception and design. Material preparation, data collection, and analyses were performed by Mª Pilar Bahíllo Curieses, Paloma Pérez López, Pablo Fernández Velasco, Ana María Vidueira Martínez y Gonzalo Díaz Soto. The first draft of the manuscript was written by Mª Pilar Bahíllo Curieses and all authors commented on previous versions of the manuscript. All authors read and approved the final manuscript.
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M.P.B.-C. has received speaker and consultant honoraria from Medtronic, NovoNordisk, Abbot, Lilly. G.D.-S. has received speaker and consultant honoraria from Medtronic, NovoNordisk, Abbot, Lilly. The other authors have no relevant financial or non-financial interests to disclose. PBC and PFV contributed equally to this study and share first authorship.
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The study was performed in line with the principles of the Declaration of Helsinki. Approval was granted by Ethics Committee (CEIm de las Áreas de Salud de Valladolid) Number PI 23-3134.
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Informed consent was obtained from all individual participants included in the study. Written informed consent was obtained from the parents.
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Bahillo-Curieses, P., Fernández Velasco, P., Pérez-López, P. et al. Utility of time in tight range (TITR) in evaluating metabolic control in pediatric and adult patients with type 1 diabetes in treatment with advanced hybrid closed-loop systems. Endocrine (2024). https://doi.org/10.1007/s12020-024-03881-6
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DOI: https://doi.org/10.1007/s12020-024-03881-6