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Predicting Reduction Mammaplasty Total Resection Weight With Machine Learning.
Seu, Michelle Y; Rezania, Nikki; Murray, Carolyn E; Qiao, Mark T; Arnold, Sydney; Siotos, Charalampos; Ferraro, Jennifer; Jazayeri, Hossein E; Hood, Keith; Shenaq, Deana; Kokosis, George.
Afiliação
  • Rezania N; From the Division of Plastic & Reconstructive Surgery, Rush University Medical Center, Chicago, IL.
  • Murray CE; From the Division of Plastic & Reconstructive Surgery, Rush University Medical Center, Chicago, IL.
  • Qiao MT; From the Division of Plastic & Reconstructive Surgery, Rush University Medical Center, Chicago, IL.
  • Arnold S; From the Division of Plastic & Reconstructive Surgery, Rush University Medical Center, Chicago, IL.
  • Siotos C; From the Division of Plastic & Reconstructive Surgery, Rush University Medical Center, Chicago, IL.
  • Ferraro J; From the Division of Plastic & Reconstructive Surgery, Rush University Medical Center, Chicago, IL.
  • Jazayeri HE; Section of Oral and Maxillofacial Surgery, Department of Surgery, Michigan Medicine, Ann Arbor, MI.
  • Hood K; From the Division of Plastic & Reconstructive Surgery, Rush University Medical Center, Chicago, IL.
  • Shenaq D; From the Division of Plastic & Reconstructive Surgery, Rush University Medical Center, Chicago, IL.
  • Kokosis G; From the Division of Plastic & Reconstructive Surgery, Rush University Medical Center, Chicago, IL.
Ann Plast Surg ; 93(2): 246-252, 2024 Aug 01.
Article em En | MEDLINE | ID: mdl-38833662
ABSTRACT

BACKGROUND:

Machine learning (ML) is a form of artificial intelligence that has been used to create better predictive models in medicine. Using ML algorithms, we sought to create a predictive model for breast resection weight based on anthropometric measurements.

METHODS:

We analyzed 237 patients (474 individual breasts) who underwent reduction mammoplasty at our institution. Anthropometric variables included body surface area (BSA), body mass index, sternal notch-to-nipple (SN-N), and nipple-to-inframammary fold values. Four different ML algorithms (linear regression, ridge regression, support vector regression, and random forest regression) either including or excluding the Schnur Scale prediction for the same data were trained and tested on their ability to recognize the relationship between the anthropometric variables and total resection weights. Resection weight prediction accuracy for each model and the Schnur scale alone were evaluated based on using mean absolute error (MAE).

RESULTS:

In our cohort, mean age was 40.36 years. Most patients (71.61%) were African American. Mean BSA was 2.0 m 2 , mean body mass index was 33.045 kg/m 2 , mean SN-N was 35.0 cm, and mean nipple-to-inframammary fold was 16.0 cm. Mean SN-N was found to have the greatest variable importance. All 4 models made resection weight predictions with MAE lower than that of the Schnur Scale alone in both the training and testing datasets. Overall, the random forest regression model without Schnur scale weight had the lowest MAE at 186.20.

CONCLUSION:

Our ML resection weight prediction model represents an accurate and promising alternative to the Schnur Scale in the setting of reduction mammaplasty consultations.
Assuntos

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Limite: Adult / Female / Humans / Middle aged Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Limite: Adult / Female / Humans / Middle aged Idioma: En Ano de publicação: 2024 Tipo de documento: Article