| Literature DB >> 35262503 |
Zhuo Ma1, Sijia Huang1, Xiaoqing Wu2, Yinying Huang3, Sally Wai-Chi Chan4, Yilan Lin2, Xujuan Zheng5, Jiemin Zhu1.
Abstract
BACKGROUND: Accurate prediction of survival is crucial for both physicians and women with breast cancer to enable clinical decision making on appropriate treatments. The currently available survival prediction tools were developed based on demographic and clinical data obtained from specific populations and may underestimate or overestimate the survival of women with breast cancer in China.Entities:
Keywords: app; breast cancer; iCanPredict; survival prediction model
Mesh:
Year: 2022 PMID: 35262503 PMCID: PMC8943552 DOI: 10.2196/35768
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 7.076
Demographic and clinical characteristics of participants in the training set and the test set.a
| Characteristics | Total (n=1592) | Training set (n=1114) | Test set (n=478) | |
| Deaths, n (%) | 147 (9.23) | 103 (9.25) | 44 (9.21) | |
| Patients alive, n (%) | 1445 (90.77) | 1011 (90.75) | 434 (90.79) | |
| Follow-up (years), mean (SD) | 6.38 (2.68) | 6.40 (2.68) | 6.32 (2.68) | |
| Age at diagnosis (years), mean (SD) | 49.92 (11.59) | 49.68 (11.48) | 50.50 (11.82) | |
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| 0 | 26 (1.63) | 21 (1.89) | 5 (1.05) |
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| I | 524 (32.91) | 363 (32.59) | 161 (33.68) |
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| II | 733 (46.04) | 508 (45.60) | 225 (47.07) |
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| III | 286 (17.96) | 204 (18.31) | 82 (17.15) |
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| IV | 23 (1.44) | 18 (1.62) | 5 (1.05) |
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| Luminal A | 215 (13.51) | 160 (14.36) | 55 (11.51) |
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| Luminal B | 1059 (66.52) | 723 (64.90) | 336 (70.29) |
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| HER-2 (+) | 232 (14.57) | 168 (15.08) | 64 (13.39) |
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| Basal like | 86 (5.40) | 63 (5.66) | 23 (4.81) |
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| Breast-conserving surgery | 95 (5.97) | 68 (6.10) | 27 (5.65) |
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| Mastectomy | 1497 (94.03) | 1046 (93.90) | 451 (94.35) |
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| Yes | 453 (28.45) | 321 (28.82) | 132 (27.62) |
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| No | 1139 (71.55) | 793 (71.18) | 346 (72.38) |
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| Yes | 1143 (71.80) | 810 (72.71) | 333 (69.67) |
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| No | 449 (28.20) | 304 (27.29) | 145 (30.33) |
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| Yes | 1305 (81.97) | 919 (82.50) | 386 (80.75) |
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| No | 287 (18.03) | 195 (17.50) | 92 (19.25) |
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| Yes | 1007 (63.25) | 707 (63.46) | 300 (62.76) |
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| No | 585 (36.75) | 407 (36.54) | 178 (37.24) |
aPercentage=number/group total number.
Hazard ratios and model coefficients for prognostic factors included in the models (n=1114).
| Prognostic factors | β | Standard error | Hazard ratio (95% CI) | |
| Age at diagnosis | 0.031 | 0.01 | 1.031 (1.011-1.051) | .002 |
| Clinical stage | 1.113 | 0.133 | 3.044 (2.347-3.928) | <.001 |
| Molecular classification | 0.016 | 0.145 | 1.017 (0.765-1.351) | .91 |
| Operative type | 0.127 | 0.52 | 1.136 (0.410-3.145) | .81 |
| Breast reconstruction | –0.318 | 0.343 | 0.728 (0.372-1.426) | .36 |
| Axillary lymph node dissection | 0.42 | 0.422 | 1.521 (0.665-3.478) | .32 |
| Chemotherapy | –0.067 | 0.34 | 0.935 (0.480-1.821) | .84 |
| Endocrine therapy | –0.524 | 0.222 | 0.592 (0.384-0.914) | .02 |
Internal validation and external validation: model discrimination (AUCa) at 1, 5, and 10 years after diagnosis.
| Year | Internal validation | External validation | ||
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| AUC | 95% CI | AUC | 95% CI |
| 1 | 0.802 | 0.713-0.892 | 0.857 | 0.725-0.988 |
| 5 | 0.813 | 0.760-0.865 | 0.738 | 0.634-0.841 |
| 10 | 0.740 | 0.672-0.808 | 0.685 | 0.580-0.790 |
aAUC: area under the curve.
Internal validation and external validation: calibration (Brier) at 1, 5, and 10 years after diagnosis.
| Year | Internal validation | External validation | ||
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| Brier score | 95% CI | Brier score | 95% CI |
| 1 | 0.005 | 0.001-0.010 | 0.014 | 0.004-0.025 |
| 5 | 0.055 | 0.043-0.067 | 0.057 | 0.038-0.075 |
| 10 | 0.103 | 0.083-0.124 | 0.120 | 0.084-0.156 |
Figure 1Receiver operator characteristic (ROC) curves for breast cancer overall survival rates. (A) Training set at 1 year; (B) test set at 1 year; (C) training set at 5 years; (D) test set at 5 years; (E) training set at 10 years; (F) test set at 10 years.
Figure 2Screenshots of the iCanPredict app.
Figure 3Flowchart of the use of the iCanPredict app.