| Literature DB >> 28241793 |
Su-Hsin Huang1,2, Joon-Khim Loh3,4, Jinn-Tsong Tsai5, Ming-Feng Houg6,7, Hon-Yi Shi8,9.
Abstract
BACKGROUND: Few studies of breast cancer surgery outcomes have used longitudinal data for more than 2 years. This study aimed to validate the use of the artificial neural network (ANN) model to predict the 5-year mortality of breast cancer patients after surgery and compare predictive accuracy between the ANN model, multiple logistic regression (MLR) model, and Cox regression model.Entities:
Keywords: 5-year mortality; Artificial neural networks; Breast cancer surgery; Cox regression; Multiple logistic regression
Mesh:
Year: 2017 PMID: 28241793 PMCID: PMC5327555 DOI: 10.1186/s40880-017-0192-9
Source DB: PubMed Journal: Chin J Cancer ISSN: 1944-446X
Fig. 1Flowchart of the study procedure
Clinical and hospitalization characteristics of the 3632 selected patients who underwent surgery for breast cancer
| Variable | Number of patients (%) |
|---|---|
| Breast cancer surgery type | |
| Breast-conserving surgery | 1110 (30.6) |
| Modified radical mastectomy | 2248 (61.9) |
| Mastectomy with reconstruction | 274 (7.5) |
| Circulatory system comorbidity | |
| No | 3347 (92.2) |
| Yes | 285 (7.8) |
| Genitourinary system comorbidity | |
| No | 3396 (93.5) |
| Yes | 236 (6.5) |
| Chemotherapy | |
| No | 2114 (58.2) |
| Yes | 1518 (41.8) |
| Radiotherapy | |
| No | 3233 (89.0) |
| Yes | 399 (11.0) |
| Hormone therapy | |
| No | 1037 (28.6) |
| Yes | 2595 (71.4) |
| Hospital level | |
| Medical center | 2109 (58.1) |
| Regional hospital | 1341 (36.9) |
| District hospital | 182 (5.0) |
| 5-year outcome after surgery | |
| Death | 502 (13.8) |
| Survival | 3130 (86.2) |
The analysis of the relationship between effective predictors and 5-year mortality of the 2543 breast cancer patients using the multiple logistic regression (MLR) model
| Variable | Univariate analysis | Multivariate analysis | ||
|---|---|---|---|---|
| OR (95% CI) |
| OR (95% CI) |
| |
| Age | 1.02 (1.02–1.03) | 0.001 | 1.03 (1.03–1.04) | 0.001 |
| Charlson comorbidity index | 1.18 (1.14–1.22) | 0.001 | 1.15 (1.11–1.20) | 0.001 |
| Circulatory system comorbidity | ||||
| Yes vs. no | 1.08 (0.77–1.53) | 0.641 | 0.89 (0.62–1.28) | 0.543 |
| Genitourinary system comorbidity | ||||
| Yes vs. no | 0.76 (0.50–1.15) | 0.198 | 0.84 (0.54–1.30) | 0.441 |
| Breast cancer surgery type | ||||
| MRM vs. BCS | 1.04 (0.97–1.12) | 0.247 | 1.03 (0.95–1.12) | 0.448 |
| MRM + TRAM vs. BCS | 1.02 (0.98–1.06) | 0.475 | 1.01 (0.98–1.04) | 0.790 |
| Chemotherapy | ||||
| Yes vs. no | 1.57 (1.30–1.90) | 0.001 | 1.92 (1.55–2.38) | 0.001 |
| Radiotherapy | ||||
| Yes vs. no | 1.46 (1.11–1.92) | 0.006 | 1.52 (1.13–2.05) | 0.006 |
| Hormone therapy | ||||
| Yes vs. no | 0.74 (0.59–0.92) | 0.006 | 0.79 (0.68–0.90) | 0.006 |
| Hospital level | ||||
| Medical center vs. district hospital | 0.98 (0.94–1.02) | 0.276 | 0.98 (0.95–1.02) | 0.161 |
| Regional hospital vs. district hospital | 0.94 (0.86–1.03) | 0.149 | 0.95 (0.89–1.02) | 0.092 |
| Surgery volume of hospital | 0.94 (0.92–0.96) | 0.001 | 0.95 (0.92–0.98) | 0.004 |
| Surgery volume of surgeon | 0.93 (0.91–0.96) | <0.001 | 0.93 (0.90–0.97) | <0.001 |
OR odds ratio, 95% CI 95% confidence interval, MRM modified radical mastectomy, BCS breast-conserving surgery, TRAM transverse rectus abdominis myocutaneous flap reconstruction. Surgery volume of hospital/surgeon was defined as the percentage of breast cancer surgeries among the total surgeries performed by the respective hospital or surgeon during the study period
Fig. 2Schematic representation of the artificial neural network (ANN) model. This model consists of 7 input neurons [age, Charlson comorbidity index (CCI), chemotherapy, radiotherapy, hormone therapy, surgery volumes of hospital and surgeon], 1 bias neuron in the input layer, 4 neurons in a single hidden layer (H1-4), 1 bias neuron in the hidden layer (HB), and 2 output neurons (death and survival) representing the 5-year outcome of breast cancer patients after surgery. Surgery volume of hospital/surgeon was defined as the percentage of breast cancer surgeries among the total surgeries performed by the respective hospital or surgeon during the study period
Comparison of performance indices of the artificial neural network (ANN), MLR, and Cox regression models for predicting 5-year postoperative mortality of breast cancer patients
| Dataset | Sensitivity (%) | Specificity (%) | PPV (%) | NPV (%) | Accuracy (%) | AUC (%) |
|---|---|---|---|---|---|---|
| Training dataset ( | ||||||
| ANN model | 86.88 | 89.09 | 65.24 | 87.91 | 87.43 | 72.86 |
| MLR model | 83.72 | 87.73 | 64.80 | 83.57 | 86.55 | 52.42 |
| Cox model | 86.37 | 88.06 | 60.24 | 85.48 | 84.53 | 65.13 |
| Testing dataset ( | ||||||
| ANN model | 88.00 | 89.04 | 77.52 | 87.64 | 88.50 | 71.67 |
| MLR model | 83.00 | 84.36 | 73.35 | 87.02 | 86.09 | 51.93 |
| Cox model | 86.43 | 87.57 | 74.99 | 87.10 | 86.45 | 65.87 |
| Validation dataset ( | ||||||
| ANN model | 85.66 | 88.71 | 53.42 | 86.89 | 88.82 | 70.76 |
| MLR model | 83.77 | 87.35 | 50.96 | 86.01 | 85.40 | 52.44 |
| Cox model | 84.61 | 85.43 | 52.02 | 86.60 | 86.91 | 64.79 |
PPV positive predictive value, NPV negative predictive value, AUC area under receiver operating characteristic curve