Risk of Developing Breast Reconstruction Complications: A Machine-Learning Nomogram for Individualized Risk Estimation with and without Postmastectomy Radiation Therapy.

Plastic and reconstructive surgery 2022 Vol.149(1) p. 1e-12e

Naoum GE, Ho AY, Shui A, Salama L, Goldberg S, Arafat W, Winograd J, Colwell A, Smith BL, Taghian AG

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Abstract

[BACKGROUND] The purpose of this study was to create a nomogram using machine learning models predicting risk of breast reconstruction complications with or without postmastectomy radiation therapy.

[METHODS] Between 1997 and 2017, 1617 breast cancer patients undergoing mastectomy and breast reconstruction were analyzed. Those with autologous, tissue expander/implant, and single-stage direct-to-implant reconstruction were included. Postmastectomy radiation therapy was delivered either with three-dimensional conformal photon or proton therapy. Complication endpoints were defined based on surgical reintervention operative notes as infection/necrosis requiring débridement. For implant-based patients, complications were defined as capsular contracture requiring capsulotomy and implant failure. For each complication endpoint, least absolute shrinkage and selection operator-penalized regression was used to select the subset of predictors associated with the smallest prediction error from 10-fold cross-validation. Nomograms were built using the least absolute shrinkage and selection operator-selected predictors, and internal validation using cross-validation was performed.

[RESULTS] Median follow-up was 6.6 years. Among 1617 patients, 23 percent underwent autologous reconstruction, 39 percent underwent direct-to-implant reconstruction, and 37 percent underwent tissue expander/implant reconstruction. Among 759 patients who received postmastectomy radiation therapy, 8.3 percent received proton-therapy to the chest wall and nodes and 43 percent received chest wall boost. Internal validation for each model showed an area under the receiver operating characteristic curve of 73 percent for infection, 75 percent for capsular contracture, 76 percent for absolute implant failure, and 68 percent for overall implant failure. Periareolar incisions and complete implant muscle coverage were found to be important predictors for infection and capsular contracture, respectively. In a multivariable analysis, we found that protons compared to no postmastectomy radiation therapy significantly increased capsular contracture risk (OR, 15.3; p < 0.001). This was higher than the effect of photons with electron boost versus no postmastectomy radiation therapy (OR, 2.5; p = 0.01).

[CONCLUSION] Using machine learning, these nomograms provided prediction of postmastectomy breast reconstruction complications with and without radiation therapy.

[CLINICAL QUESTION/LEVEL OF EVIDENCE] Risk, III.

추출된 의학 개체 (NER)

유형영어 표현한국어 / 풀이UMLS CUI출처등장
해부 breast 유방 dict 5
합병증 capsular contracture 피막구축 dict 4
합병증 infection 감염 dict 3
해부 tissue scispacy 1
해부 capsular scispacy 1
해부 muscle scispacy 1
합병증 necrosis 괴사 dict 1
합병증 Periareolar incisions scispacy 1
약물 [BACKGROUND] scispacy 1
약물 protons scispacy 1
약물 electron scispacy 1
질환 breast cancer C0006142
Malignant neoplasm of breast
scispacy 1
질환 implant failure C0854676
Implant Failure
scispacy 1
질환 contracture C0009917
Contracture
scispacy 1
질환 breast cancer patients scispacy 1
기타 patients scispacy 1
기타 tissue expander/implant scispacy 1
기타 wall scispacy 1
기타 capsular scispacy 1

MeSH Terms

Adult; Aged; Aged, 80 and over; Breast Neoplasms; Combined Modality Therapy; Female; Follow-Up Studies; Forecasting; Humans; Incidence; Machine Learning; Mammaplasty; Mastectomy; Middle Aged; Nomograms; Postoperative Complications; Retrospective Studies; Risk Assessment; United States; Young Adult

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