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Computed tomography (CT) derived radiomics to predict post-operative disease recurrence in gastric cancer; a systematic review and meta-analysis.
O'Sullivan, Niall J; Temperley, Hugo C; Horan, Michelle T; Curtain, Benjamin M Mac; O'Neill, Maeve; Donohoe, Claire; Ravi, Narayanasamy; Corr, Alison; Meaney, James F M; Reynolds, John V; Kelly, Michael E.
Afiliação
  • O'Sullivan NJ; Department of Radiology, St. James's Hospital, Dublin, Ireland; School of Medicine, Trinity College Dublin, Ireland; The National Centre for Advanced Medical Imaging (CAMI), St. James's Hospital, Dublin, Ireland. Electronic address: nosulli7@tcd.ie.
  • Temperley HC; Department of Radiology, St. James's Hospital, Dublin, Ireland; School of Medicine, Trinity College Dublin, Ireland.
  • Horan MT; Department of Radiology, St. James's Hospital, Dublin, Ireland; The National Centre for Advanced Medical Imaging (CAMI), St. James's Hospital, Dublin, Ireland.
  • Curtain BMM; Department of Surgery, St. James's Hospital, Dublin, Ireland.
  • O'Neill M; Department of Surgery, St. James's Hospital, Dublin, Ireland.
  • Donohoe C; Department of Upper Gastrointestinal Surgery, St. James's Hospital, Dublin, Ireland.
  • Ravi N; Department of Upper Gastrointestinal Surgery, St. James's Hospital, Dublin, Ireland.
  • Corr A; Department of Radiology, St. James's Hospital, Dublin, Ireland.
  • Meaney JFM; Department of Radiology, St. James's Hospital, Dublin, Ireland; School of Medicine, Trinity College Dublin, Ireland; The National Centre for Advanced Medical Imaging (CAMI), St. James's Hospital, Dublin, Ireland.
  • Reynolds JV; School of Medicine, Trinity College Dublin, Ireland; Department of Upper Gastrointestinal Surgery, St. James's Hospital, Dublin, Ireland.
  • Kelly ME; School of Medicine, Trinity College Dublin, Ireland; Department of Surgery, St. James's Hospital, Dublin, Ireland; Trinity St James Cancer Institute, Trinity College Dublin, Ireland.
Article em En | MEDLINE | ID: mdl-39025746
ABSTRACT

INTRODUCTION:

Radiomics offers the potential to predict oncological outcomes from pre-operative imaging in order to identify 'high risk' patients at increased risk of recurrence. The application of radiomics in predicting disease recurrence provides tailoring of therapeutic strategies. We aim to comprehensively assess the existing literature regarding the current role of radiomics as a predictor of disease recurrence in gastric cancer.

METHODS:

A systematic search was conducted in Medline, EMBASE, and Web of Science databases. Inclusion criteria encompassed retrospective and prospective studies investigating the use of radiomics to predict post-operative recurrence in ovarian cancer. Study quality was assessed using the QUADAS-2 and Radiomics Quality Score tools.

RESULTS:

Nine studies met the inclusion criteria, involving a total of 6,662 participants. Radiomic-based nomograms demonstrated consistent performance in predicting disease recurrence, as evidenced by satisfactory area under the receiver operating characteristic curve values (AUC range 0.72 - 1). The pooled AUCs calculated using the inverse-variance method for both the training and validation datasets were 0.819 and 0.789 respectively

CONCLUSION:

Our review provides good evidence supporting the role of radiomics as a predictor of post-operative disease recurrence in gastric cancer. Included studies noted good performance in predicting their primary outcome. Radiomics may enhance personalised medicine by tailoring treatment decision based on predicted prognosis.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: Curr Probl Diagn Radiol Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: Curr Probl Diagn Radiol Ano de publicação: 2024 Tipo de documento: Article