| Literature DB >> 25707942 |
Guan-Mau Huang, Kai-Yao Huang, Tzong-Yi Lee, Julia Weng.
Abstract
BACKGROUND: The prevalence of type 2 diabetes is increasing at an alarming rate. Various complications are associated with type 2 diabetes, with diabetic nephropathy being the leading cause of renal failure among diabetics. Often, when patients are diagnosed with diabetic nephropathy, their renal functions have already been significantly damaged. Therefore, a risk prediction tool may be beneficial for the implementation of early treatment and prevention.Entities:
Mesh:
Year: 2015 PMID: 25707942 PMCID: PMC4331704 DOI: 10.1186/1471-2105-16-S1-S5
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.169
The top five best performing clinical features for diabetic nephropathy classification.
| Feature | Decision tree | Random forest | SVM | Naïve Bayes |
|---|---|---|---|---|
| 96.23% | 95.36% | 95.49% | 95.13% | |
| 85.51% | 82.90% | 82.61% | 79.57% | |
| 83.19% | 80% | 84.72% | 81.30% | |
| 60.87% | 56.53% | 57.89% | 59.57% | |
| 63.91% | 62.32% | 59.13% | 55.22% |
Performance of utilizing variable numbers of clinical features in different classifiers to predict diabetic nephropathy.
| Classifier | No. of features | Accuracy (%) | Sensitivity (%) | Specificity (%) |
|---|---|---|---|---|
| Decision tree | 7 | 62.17 | 55.56 | 69.02 |
| Random forest | 6 | 63.91 | 60.68 | 67.26 |
| SVM | 3 | 60.87 | 50 | 78.72 |
| Naïve Bayes | 7 | 62.61 | 41.03 | 84.96 |
The top five best performing genetic features for diabetic nephropathy classification.
| Feature/Classifier | Decision tree | Random forest | SVM | Naïve Bayes |
|---|---|---|---|---|
| 57.39% | 51.01% | 47.83% | 56.52% | |
| 55.22% | 53.91% | 49.13% | 55.22% | |
| 53.48% | 53.04% | 55.22% | 53.48% | |
| 53.48% | 53.04% | 47.83% | 53.48% | |
| 53.91% | 53.04% | 47.52% | 52.17% |
The GHSR gene is represented by two SNP IDs.
Performance of utilizing variable numbers of genetic features in different classifiers to predict diabetic nephropathy.
| Classifier | No. of features | Accuracy (%) | Sensitivity (%) | Specificity (%) |
|---|---|---|---|---|
| Decision tree | 4 | 60.43 | 54.70 | 66.37 |
| Random forest | 12 | 53.91 | 59.83 | 47.79 |
| SVM | 13 | 53.04 | 67.65 | 31.9 |
| Naïve Bayes | 13 | 56.09 | 58.12 | 53.98 |
Performance of utilizing variable numbers of genetic and clinical features to predict diabetic nephropathy.
| Classifier | No. of features | Accuracy (%) | Sensitivity (%) | Specificity (%) |
|---|---|---|---|---|
| Decision tree | 7 | 65.22 | 63.25 | 67.26 |
| Random forest | 25 | 65.09 | 60.68 | 71.68 |
| SVM | 7 | 61.23 | 66.17 | 51.06 |
| Naïve Bayes | 10 | 63.91 | 46.15 | 82.30 |
Performance of gender-based decision tree classification of diabetic nephropathy in the training dataset.
| Group | Feature | SN(%) | SP(%) | ACC(%) |
|---|---|---|---|---|
| Serum triglyceride | 81.82 | 100 | 93.10 | |
| HDL | 76.27 | 72.88 | 74.58 | |
| Serum triglyceride | 73.68 | 74.47 | 74.24 | |
| Serum triglyceride | 97.72 | 69.23 | 87.14 | |
| Urinary albumin | 96.88 | 100 | 97.06 |
Performance of gender-based decision tree classification of diabetic nephropathy in the testing dataset.
| Group | Feature | SN(%) | SP(%) | ACC(%) |
|---|---|---|---|---|
| Serum triglyceride | 75 | 90.91 | 84.24 | |
| HDL | 69.23 | 73.08 | 71.79 | |
| Serum triglyceride | 63.63 | 69.23 | 72.73 | |
| Serum triglyceride | 84.62 | 70 | 78.26 | |
| Urinary albumin | 100 | 100 | 100 |
Figure 1Decision tree classification of diabetic nephropathy among male and female type 2 diabetics. Accuracy measures are represented by the color intensity. Red indicates 100% prediction accuracy for DN. Pink indicates a prediction accuray above 80% but below 100% for DN. Green indicates 100% prediction accuracy for non-DN. Light green indicates a prediction accruacy above 80% but below 100% for non-DN.
Figure 2System flow of diabetic nephropathy analysis.