Multiple Risks and Adolescent Depressive Symptoms in Ethnic Regions of China: Analyses Using Cumulative Risk Model, Logistic Regression, and Association Rule Mining
Abstract
:1. Introduction
2. Methods
2.1. Participants and Procedure
2.2. Measures
Analytic Approaches
3. Results
3.1. Descriptive Analysis
3.2. Approach 1: Cumulative Risk Model
3.3. Approach 2: Multiple Individual Risk Factors Model via Logistic Regression Analysis
3.4. Approach 3: Multiple Individual Risk Factors Model Using Association Rule Mining
4. Discussion
4.1. Implications
4.2. Limitations and Future Directions
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Risk Factor | Range of the Raw Score | Risk Criterion | At Risk (%) |
---|---|---|---|
Family risk factors | |||
Unfavorable family structure | 0/1 | Not living with parents | 24.0% |
Separation from parents | 0/1 | Have not lived with parents for 6 months because parents have been out at work. | 36.8% |
Low parental education | 1–6 | Parental education level was below high school (completing only middle school or less). | 53.6% |
Financial strain | 1–20 | The score of the family economic strain scale is above the 75th percentile. | 26.7% |
Low family cohesion | 17–75 | The score of the family cohesion subscale in FACES-II is below the 25th percentile. | 14.7% |
High family conflict | 0–9 | The score of the family conflict subscale in the FES is above the 75th percentile. | 22.8% |
School risk factors | |||
Low teacher support | 7–28 | The score of the teacher support subscale in the school climate scale is below the 25th percentile. | 15.6% |
Low peer support | 3–20 | The score of the peer support subscale in the school climate scale is below the 25th percentile. | 24.6% |
Low autonomy support | 16–52 | The score of the autonomy support subscale in the school climate scale is below the 25th percentile. | 23.9% |
Parameter | Formula ( Is the Probability of an Association) | Meaning |
---|---|---|
Support | Support refers to the probability of {X, Y} appearing in all item sets; that is, the probability that the item set contains both X and Y. | |
Confidence | The confidence denotes the conditional probability of the occurrence of RHS Y given that LHS X occurs, i.e., the probability of including Y in the item set containing X. | |
Lift | The lift measures the dependency between X and Y, with values greater than 1 indicating a positive correlation and values less than 1 indicating a negative correlation. |
Variable | M (SD) | 1 | 2 | 3 | 4 | 5 | 6 | 7 |
---|---|---|---|---|---|---|---|---|
1—Financial strain | 7.51 (3.72) | - | ||||||
2—Family cohesion | 53.27 (9.56) | −0.17 *** | - | |||||
3—Family conflict | 2.47 (1.94) | 0.12 *** | −0.41 *** | - | ||||
4—Teacher support | 21.85 (4.20) | −0.05 ** | 0.38 *** | −0.19 *** | - | |||
5—Autonomy support | 14.24 (3.69) | −0.07 *** | 0.33 *** | −0.12 *** | 0.57 *** | - | ||
6—Peer support | 39.58 (5.91) | −0.19 *** | 0.39 *** | −0.27 *** | 0.44 *** | 0.43 *** | - | |
7—Depressive symptoms | 11.87 (5.94) | 0.14 *** | −0.48 *** | 0.40 *** | −0.36 *** | −0.27 *** | −0.45 *** | - |
Independent Variables | Univariate Logistic Regression | Multiple Logistic Regression | ||||
---|---|---|---|---|---|---|
OR | 95% CI | p | OR | 95% CI | p | |
Gender | 1.40 | [1.20, 1.65] | <0.001 | 1.71 | [1.44, 2.07] | <0.001 |
Grade | 1.09 | [1.04, 1.14] | <0.001 | 1.06 | [1.01, 1.12] | 0.033 |
Ethnicity | 1.04 | [0.84, 1.30] | 0.704 | - | - | - |
Only child or not | 1.07 | [0.84, 1.37] | 0.567 | - | - | - |
Academic rank | 1.15 | [1.07, 1.25] | 0.000 | 1.03 | [0.97, 1.17] | 0.599 |
Not living with parents | 1.22 | [1.01, 1.46] | 0.036 | .89 | [0.71, 1.11] | 0.308 |
Separation from parents | 1.31 | [1.12, 1.55] | 0.001 | 1.02 | [0.83, 1.24] | 0.884 |
Parental education risk | 0.92 | [0.79, 1.08] | 0.328 | - | - | - |
Family financial strain | 1.05 | [1.03, 1.07] | <0.001 | 1.03 | [0.84, 1.27] | 0.791 |
Family cohesion | 0.91 | [0.90, 0.92] | <0.001 | 0.94 | [0.93, 0.95] | <0.001 |
Family conflict | 1.49 | [1.42, 1.56] | <0.001 | 1.26 | [1.20, 1.33] | <0.001 |
Teacher support | 0.86 | [0.84, 0.88] | <0.001 | 0.94 | [0.92, 0.97] | <0.001 |
Peer support | 0.86 | [0.85, 0.87] | <0.001 | 0.90 | [0.88, 0.91] | <0.001 |
Autonomy support | 0.88 | [0.86, 0.90] | <0.001 | 1.03 | [0.99, 1.06] | 0.152 |
LHS (RHS Was Depression) | Support | Confidence | Lift |
---|---|---|---|
high family conflict, low family cohesion, and from multiple-child family | 5.48% | 82.14% | 2.78 |
high family conflict and low family cohesion | 6.26% | 81.06% | 2.75 |
high family conflict, ethnic minority, and low family cohesion | 5.21% | 80.95% | 2.74 |
low peer support, ethnic minority, low family cohesion, and from multiple-child family | 5.61% | 76.74% | 2.60 |
low peer support, low family cohesion, and from multiple-child family | 6.77% | 76.25% | 2.58 |
low peer support, ethnic minority, and low family cohesion | 6.33% | 75.00% | 2.54 |
low peer support and low family cohesion | 7.52% | 74.41% | 2.52 |
ethnic minority, secondary school, and low family cohesion | 5.55% | 71.18% | 2.41 |
secondary school, low family cohesion, and from multiple-child family | 6.09% | 70.75% | 2.40 |
low family cohesion and low teacher support | 5.27% | 70.14% | 2.38 |
secondary school and low family cohesion | 6.74% | 69.96% | 2.37 |
low peer support, ethnic minority, female, and from multiple-child family | 5.55% | 69.96% | 2.37 |
low peer support, female, and from multiple-child family | 6.67% | 68.77% | 2.33 |
low peer support, ethnic minority, and female | 6.12% | 68.70% | 2.33 |
low peer support and low teacher support | 5.48% | 68.22% | 2.31 |
low peer support and female | 7.32% | 67.82% | 2.30 |
female, low family cohesion, and from multiple-child family | 6.94% | 66.45% | 2.25 |
high family conflict and female | 5.72% | 65.37% | 2.22 |
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Zhou, T.; Wang, C.; Hu, J.; Zhang, S.; Fu, L.; Huang, Z.; Qi, H. Multiple Risks and Adolescent Depressive Symptoms in Ethnic Regions of China: Analyses Using Cumulative Risk Model, Logistic Regression, and Association Rule Mining. Behav. Sci. 2025, 15, 657. https://doi.org/10.3390/bs15050657
Zhou T, Wang C, Hu J, Zhang S, Fu L, Huang Z, Qi H. Multiple Risks and Adolescent Depressive Symptoms in Ethnic Regions of China: Analyses Using Cumulative Risk Model, Logistic Regression, and Association Rule Mining. Behavioral Sciences. 2025; 15(5):657. https://doi.org/10.3390/bs15050657
Chicago/Turabian StyleZhou, Ting, Chen Wang, Jennifer Hu, Shan Zhang, Lin Fu, Zheng Huang, and Huiying Qi. 2025. "Multiple Risks and Adolescent Depressive Symptoms in Ethnic Regions of China: Analyses Using Cumulative Risk Model, Logistic Regression, and Association Rule Mining" Behavioral Sciences 15, no. 5: 657. https://doi.org/10.3390/bs15050657
APA StyleZhou, T., Wang, C., Hu, J., Zhang, S., Fu, L., Huang, Z., & Qi, H. (2025). Multiple Risks and Adolescent Depressive Symptoms in Ethnic Regions of China: Analyses Using Cumulative Risk Model, Logistic Regression, and Association Rule Mining. Behavioral Sciences, 15(5), 657. https://doi.org/10.3390/bs15050657