| Literature DB >> 35238791 |
Peng Zhang1,2, Christopher Fonnesbeck3, Douglas C Schmidt1,2, Jules White1, Samantha Kleinberg4, Shelagh A Mulvaney5,6,7.
Abstract
BACKGROUND: For adolescents living with type 1 diabetes (T1D), completion of multiple daily self-management tasks, such as monitoring blood glucose and administering insulin, can be challenging because of psychosocial and contextual barriers. These barriers are hard to assess accurately and specifically by using traditional retrospective recall. Ecological momentary assessment (EMA) uses mobile technologies to assess the contexts, subjective experiences, and psychosocial processes that surround self-management decision-making in daily life. However, the rich data generated via EMA have not been frequently examined in T1D or integrated with machine learning analytic approaches.Entities:
Keywords: adolescents; behavioral medicine; ecological momentary assessment; informatics; machine learning; mobile phone; psychosocial; self-management; type 1 diabetes
Mesh:
Year: 2022 PMID: 35238791 PMCID: PMC8931646 DOI: 10.2196/21959
Source DB: PubMed Journal: JMIR Mhealth Uhealth ISSN: 2291-5222 Impact factor: 4.947
Figure 1Iterative process of the learned filtering architecture. BG: blood glucose; ML: machine learning.
Characteristics of the sample (N=45).
| Variable | Values | |
| Age (years), mean (SD) | 13.3 (1.7) | |
| Female, n (%) | 24 (53) | |
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| White | 38 (84) |
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| African American | 4 (10) |
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| Asian | 1 (2) |
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| Hispanic | 1 (2) |
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| Other | 0 (0) |
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| Less than high school | 1 (2) |
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| High school or GEDa | 13 (29) |
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| 2-year college | 7 (16) |
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| 4-year college | 15 (33) |
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| Graduate degree | 5 (11) |
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| N/Ab | 4 (9) |
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| Less than high school | 0 (0) |
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| High school or GED | 10 (22) |
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| 2-year college | 12 (27) |
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| 4-year college | 17 (38) |
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| Graduate degree | 2 (4) |
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| N/A | 12 (27) |
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| <25,000 | 2 (4) |
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| 25,001-35,000 | 3 (7) |
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| 35,001-75,000 | 7 (16) |
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| 75,001-100,000 | 14 (31) |
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| >100,000 | 3 (7) |
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| N/A | 4 (9) |
| Duration of diabetes (years), mean (SD) | 5.5 (3.7) | |
| HbA1cc, mean (SD) | 9.0 (1.9) | |
| Use insulin pump (yes), n (%) | 26 (58) | |
aGED: General Educational Development.
bN/A: missing values.
cHbA1c: hemoglobin A1c.
Summary statistics of features with statistical significance on daily self-monitoring of blood glucose frequency.
| Feature | Coefficient | SE | |
| Mother’s education | 0.5221 | 0.062 | <.001 |
| Age | −0.2494 | 0.057 | <.001 |
| Male | 0.2721 | 0.032 | <.001 |
| Father’s education | −0.1691 | 0.066 | .01 |
Summary statistics of features with statistical significance on insulin administration.
| Feature | Coefficient | SE | |
| Hungry | −0.0958 | 0.021 | <.001 |
| No supplies | 0.3703 | 0.091 | <.001 |
| Breakfast | 0.1134 | 0.021 | <.001 |
| Mother’s education | −0.145 | 0.034 | <.001 |
| Black race | −0.1637 | 0.039 | <.001 |
| Diabetes burnout | 0.1495 | 0.047 | <.001 |
| Third day of week | −0.2369 | 0.077 | <.001 |
| Lunch | 0.0695 | 0.022 | <.001 |
| Busy | 0.1219 | 0.043 | <.001 |
| Second day of week | −0.216 | 0.077 | .01 |
| Fourth day of week | −0.2146 | 0.077 | .01 |
| Weekend | −0.1999 | 0.078 | .01 |
| Fatigue | 0.0508 | 0.02 | .01 |
| Fifth day of week | −0.1765 | 0.077 | .02 |
| Low blood glucose | 0.0849 | 0.039 | .03 |
| Gender | −0.0425 | 0.02 | .03 |
| Mood | −0.0919 | 0.043 | .03 |
| Sixth day of week | −0.1602 | 0.077 | .04 |
Summary statistics of features with statistical significance on self-monitoring of blood glucose.
| Feature | Coefficient | SE | |
| Busy | 0.1706 | 0.041 | <.001 |
| No supplies | 0.7417 | 0.089 | <.001 |
| Other family | 0.1436 | 0.038 | <.001 |
| Gender | −0.1543 | 0.019 | <.001 |
| Mother’s education | −0.1835 | 0.033 | <.001 |
| Income | −0.2569 | 0.039 | <.001 |
| Parent | −0.0785 | 0.026 | <.001 |
| Black race | −0.1064 | 0.038 | .01 |
| Casual | −0.084 | 0.031 | .01 |
| Father’s education | 0.0906 | 0.035 | .01 |
| With sibling | 0.0522 | 0.02 | .01 |
| In restaurant | −0.2582 | 0.106 | .02 |
| Hungry | −0.0436 | 0.021 | .04 |
| Other place | −0.2177 | 0.108 | .045 |
| Stress+energy | 0.9274 | 0.466 | .047 |
Self-monitoring of blood glucose <4 classification results.
| Feature group | Accuracy, mean (SD) | Precision, mean (SD) | Recall, mean (SD) | F1 score, mean (SD) |
| Demographics | 75% (0.04) | 75% (0.08) | 72% (0.07) | 74% (0.06) |
| Time variables | 49% (0.04) | 46% (0.06) | 21% (0.14) | 28% (0.12) |
| All | 68% (0.03) | 67% (0.06) | 68% (0.06) | 67% (0.03) |
Missing mealtime blood glucose measurement classification results.
| Feature group | Accuracy (%) | Precision (%) | Recall (%) | F1 score (%) | Brier test (%) |
| Demographics | 78 | 38 | 62 | 47 | 22 |
| Time variables | 50 | 13 | 42 | 20 | 51 |
| Social context | 61 | 21 | 55 | 30 | 25 |
| Stress, fatigue, and mood | 74 | 22 | 29 | 25 | 33 |
| Barriers | 73 | 33 | 44 | 33 | 25 |
| All | 88 | 78 | 35 | 48 | 12 |
| All (MCMCa) | 87 | 78 | 25 | 38 | 13 |
aMCMC: Markov chain Monte Carlo.
Missing mealtime insulin administration classification results.
| Feature group | Accuracy (%) | Precision (%) | Recall (%) | F1 score (%) | Brier test (%) |
| Demographics | 65 | 25 | 65 | 36 | 36 |
| Time variables | 59 | 21 | 64 | 32 | 41 |
| Social context | 49 | 16 | 59 | 25 | 51 |
| Stress, fatigue, and mood | 74 | 22 | 28 | 25 | 32 |
| Barriers | 73 | 26 | 44 | 32 | 27 |
| All | 86 | 61 | 14 | 23 | 14 |
| All (MCMCa) | 85 | 54 | 15 | 24 | 15 |
aMCMC: Markov chain Monte Carlo.