| Literature DB >> 30596658 |
Nikolaos Papachristou1, Daniel Puschmann1, Payam Barnaghi1, Bruce Cooper2, Xiao Hu2, Roma Maguire3, Kathi Apostolidis4, Yvette P Conley5, Marilyn Hammer6, Stylianos Katsaragakis7, Kord M Kober2, Jon D Levine2, Lisa McCann3, Elisabeth Patiraki8, Eileen P Furlong9, Patricia A Fox9, Steven M Paul2, Emma Ream1, Fay Wright10, Christine Miaskowski2.
Abstract
Effective symptom management is a critical component of cancer treatment. Computational tools that predict the course and severity of these symptoms have the potential to assist oncology clinicians to personalize the patient's treatment regimen more efficiently and provide more aggressive and timely interventions. Three common and inter-related symptoms in cancer patients are depression, anxiety, and sleep disturbance. In this paper, we elaborate on the efficiency of Support Vector Regression (SVR) and Non-linear Canonical Correlation Analysis by Neural Networks (n-CCA) to predict the severity of the aforementioned symptoms between two different time points during a cycle of chemotherapy (CTX). Our results demonstrate that these two methods produced equivalent results for all three symptoms. These types of predictive models can be used to identify high risk patients, educate patients about their symptom experience, and improve the timing of pre-emptive and personalized symptom management interventions.Entities:
Mesh:
Year: 2018 PMID: 30596658 PMCID: PMC6312306 DOI: 10.1371/journal.pone.0208808
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Fig 1Overview of our analytic approach to learn from data to predict future symptoms of oncology patients.
Fig 2Multiple imputation.
Fig 3Support Vector Regression.
Fig 4n-CCA training and validation: (i) training of the n-CCA model, (ii) validation of the n-CCA model.
Fig 5Bland—Atman plot of the SVR model with the polynomial function and the n-CCA model on the dataset with Maximum Likelihood imputation.
Fig 6Missing values pattern (Little’s MCAR test, p>0.05).
Fig 7Correlation analysis of predictor variables.
Performance of Support Vector Regression (SVR) models for predicting depression (CES-D) at TP2.
| 10-times Repeated 10-fold CV | 10-fold CV | Bootstrap | Bootstrap .632 | ||||||
|---|---|---|---|---|---|---|---|---|---|
| Dataset | Kernel | RMSE | R2 | RMSE | R2 | RMSE | R2 | RMSE | R2 |
| Linear | 6.484 | 0.589 | 6.484 | 0.589 | 6.484 | 0.589 | 6.484 | 0.589 | |
| Polynomial | 6.435 | 0.592 | 6.435 | 0.592 | 6.436 | 0.592 | 8.268 | 0.416 | |
| Radial Sigma | 6.475 | 0.591 | 6.470 | 0.592 | 6.473 | 0.591 | 6.752 | 0.559 | |
| Linear | 6.201 | 0.644 | 6.201 | 0.644 | 6.201 | 0.644 | 6.201 | 0.644 | |
| Polynomial | 6.191 | 0.644 | 6.191 | 0.644 | 6.193 | 0.644 | 8.121 | 0.517 | |
| Radial Sigma | 6.401 | 0.628 | 6.387 | 0.630 | 6.389 | 0.630 | 6.512 | 0.587 | |
| Linear | 7.102 | 0.548 | 7.102 | 0.548 | 7.102 | 0.548 | 7.102 | 0.548 | |
| Polynomial | 7.081 | 0.549 | 7.081 | 0.549 | 7.053 | 0.552 | 9.954 | 0.323 | |
| Radial Sigma | 7.189 | 0.540 | 7.182 | 0.541 | 7.192 | 0.540 | 7.393 | 0.508 | |
Performance of Support Vector Regression (SVR) models for predicting sleep disturbance (GSDS), anxiety (STAI-S) and depression (CES-D) at TP2.
| Sleep Disturbance | Anxiety | Depression | |||||
|---|---|---|---|---|---|---|---|
| Dataset | Kernel | RMSE | RMSE/mean | RMSE | RMSE/mean | RMSE | RMSE/mean |
| Linear | 13.302 | 0.251 | 8.084 | 0.244 | 6.484 | 0.509 | |
| Polynomial | 13.379 | 0.251 | 8.082 | 0.245 | 6.435 | 0.506 | |
| Radial Sigma | 13.709 | 0.258 | 8.147 | 0.247 | 6.475 | 0.518 | |
| Linear | 13.156 | 0.212 | 7.985 | 0.221 | 6.201 | 0.465 | |
| Polynomial | 13.153 | 0.209 | 7.982 | 0.220 | 6.191 | 0.465 | |
| Radial Sigma | 13.243 | 0.239 | 8.045 | 0.228 | 6.401 | 0.488 | |
| Linear | 13.316 | 0.248 | 8.583 | 0.256 | 7.102 | 0.537 | |
| Polynomial | 13.331 | 0.246 | 8.476 | 0.251 | 7.081 | 0.536 | |
| Radial Sigma | 13.836 | 0.256 | 8.625 | 0.258 | 7.189 | 0.556 | |
Performance of n-CCA for predicting sleep disturbance (GSDS), anxiety (STAI-S) and depression (CES-D) at TP2.
| Sleep Disturbance | Anxiety | Depression | ||||
|---|---|---|---|---|---|---|
| Dataset | RMSE | RMSE/mean | RMSE | RMSE/mean | RMSE | RMSE/mean |
| Missing data | 19.955 | 0.307 | 12.238 | 0.681 | 9.661 | 0.222 |
| Multiple Imputation | 16.113 | 0.306 | 8.941 | 0.677 | 6.907 | 0.221 |
| Maximum Likelihood | 16.680 | 0.305 | 9.320 | 0.676 | 7.583 | 0.218 |
Sleep disturbance (GSDS), anxiety (STAI-S) and depression (CES-D) real values compared to the predicted values with the SVR (polynomial kernel) and n-CCA on the dataset with the Maximum Likelihood Estimation imputation.
| Symptoms | Real Values (mean) | Real Values (range) | SVR (polynomial kernel) | n-CCA | ||||||
|---|---|---|---|---|---|---|---|---|---|---|
| Predicted Values (mean) | Predicted Values (range) | RMSE | RMSE / mean | Predicted Values (mean) | Predicted Values (range) | RMSE | RMSE / mean | |||
| 54.796 | 7.000 | 54.089 | 20.044 | 13.331 | 0.246 | 54.600 | 38.427 | 16.680 | 0.305 | |
| 34.481 | 20.000 | 33.749 | 19.495 | 8.476 | 0.251 | 34.865 | 24.895 | 9.320 | 0.267 | |
| 14.119 | 0.000 | 13.205 | 0.097 | 7.081 | 0.536 | 13.792 | 4.578 | 7.583 | 0.550 | |
Fig 8Density plots of the sleep disturbance (GSDS), anxiety (STAI-S) and depression (CES-D) real values compared to the density plots of predicted values with the SVR (polynomial kernel) and n-CCA on the dataset with the Maximum Likelihood Estimation imputation.