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Multi-center evaluation of artificial intelligent imaging and clinical models for predicting neoadjuvant chemotherapy response in breast cancer.
Qi, Tan Hong; Hian, Ong Hiok; Kumaran, Arjunan Muthu; Tan, Tira J; Cong, Tan Ryan Ying; Su-Xin, Ghislaine Lee; Lim, Elaine Hsuen; Ng, Raymond; Yeo, Ming Chert Richard; Tching, Faye Lynette Lim Wei; Zewen, Zhang; Hui, Christina Yang Shi; Xin, Wong Ru; Ooi, Su Kai Gideon; Leong, Lester Chee Hao; Tan, Su Ming; Preetha, Madhukumar; Sim, Yirong; Tan, Veronique Kiak Mien; Yeong, Joe; Yong, Wong Fuh; Cai, Yiyu; Nei, Wen Long.
Afiliação
  • Qi TH; Division of Radiation Oncology, National Cancer Centre Singapore, Singapore, Singapore.
  • Hian OH; School of Computer Science and Engineering, Nanyang Technological University Singapore, Singapore, Singapore.
  • Kumaran AM; Division of Radiation Oncology, National Cancer Centre Singapore, Singapore, Singapore.
  • Tan TJ; Division of Medical Oncology, National Cancer Center Singapore, Singapore, Singapore.
  • Cong TRY; Oncology Academic Programme, Duke-NUS Medical School, Singapore, Singapore.
  • Su-Xin GL; Division of Medical Oncology, National Cancer Center Singapore, Singapore, Singapore.
  • Lim EH; Oncology Academic Programme, Duke-NUS Medical School, Singapore, Singapore.
  • Ng R; Division of Radiation Oncology, National Cancer Centre Singapore, Singapore, Singapore.
  • Yeo MCR; Division of Medical Oncology, National Cancer Center Singapore, Singapore, Singapore.
  • Tching FLLW; Division of Medical Oncology, National Cancer Center Singapore, Singapore, Singapore.
  • Zewen Z; Oncology Academic Programme, Duke-NUS Medical School, Singapore, Singapore.
  • Hui CYS; Division of Radiation Oncology, National Cancer Centre Singapore, Singapore, Singapore.
  • Xin WR; Oncology Academic Programme, Duke-NUS Medical School, Singapore, Singapore.
  • Ooi SKG; Division of Radiation Oncology, National Cancer Centre Singapore, Singapore, Singapore.
  • Leong LCH; Oncology Academic Programme, Duke-NUS Medical School, Singapore, Singapore.
  • Tan SM; Division of Medical Oncology, National Cancer Center Singapore, Singapore, Singapore.
  • Preetha M; Oncology Academic Programme, Duke-NUS Medical School, Singapore, Singapore.
  • Sim Y; Division of Surgery and Surgical Oncology, National Cancer Center Singapore, Singapore, Singapore.
  • Tan VKM; Department of Breast Surgery, Singapore General Hospital, Singapore, Singapore.
  • Yeong J; Division of Radiation Oncology, National Cancer Centre Singapore, Singapore, Singapore.
  • Yong WF; Oncology Academic Programme, Duke-NUS Medical School, Singapore, Singapore.
  • Cai Y; Division of Oncologic Imaging, National Cancer Center Singapore, Singapore, Singapore.
  • Nei WL; Oncology Academic Programme, Duke-NUS Medical School, Singapore, Singapore.
Breast Cancer Res Treat ; 193(1): 121-138, 2022 May.
Article em En | MEDLINE | ID: mdl-35262831
ABSTRACT

BACKGROUND:

Neoadjuvant chemotherapy (NAC) plays an important role in the management of locally advanced breast cancer. It allows for downstaging of tumors, potentially allowing for breast conservation. NAC also allows for in-vivo testing of the tumors' response to chemotherapy and provides important prognostic information. There are currently no clearly defined clinical models that incorporate imaging with clinical data to predict response to NAC. Thus, the aim of this work is to develop a predictive AI model based on routine CT imaging and clinical parameters to predict response to NAC.

METHODS:

The CT scans of 324 patients with NAC from multiple centers in Singapore were used in this study. Four different radiomics models were built for predicting pathological complete response (pCR) first two were based on textural features extracted from peri-tumoral and tumoral regions, the third model based on novel space-resolved radiomics which extract feature maps using voxel-based radiomics and the fourth model based on deep learning (DL). Clinical parameters were included to build a final prognostic model.

RESULTS:

The best performing models were based on space-resolved and DL approaches. Space-resolved radiomics improves the clinical AUCs of pCR prediction from 0.743 (0.650 to 0.831) to 0.775 (0.685 to 0.860) and our DL model improved it from 0.743 (0.650 to 0.831) to 0.772 (0.685 to 0.853). The tumoral radiomics model performs the worst with no improvement of the AUC from the clinical model. The peri-tumoral combined model gives moderate performance with an AUC of 0.765 (0.671 to 0.855).

CONCLUSIONS:

Radiomics features extracted from diagnostic CT augment the predictive ability of pCR when combined with clinical features. The novel space-resolved radiomics and DL radiomics approaches outperformed conventional radiomics techniques.
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Texto completo: 1 Base de dados: MEDLINE Assunto principal: Neoplasias da Mama / Terapia Neoadjuvante Idioma: En Ano de publicação: 2022 Tipo de documento: Article País de afiliação: Singapura

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Neoplasias da Mama / Terapia Neoadjuvante Idioma: En Ano de publicação: 2022 Tipo de documento: Article País de afiliação: Singapura