An artificial intelligence model predicts the survival of solid tumour patients from imaging and clinical data

被引:6
|
作者
Schutte, Kathryn [1 ]
Brulport, Fabien [1 ]
Harguem-Zayani, Sana [2 ]
Schiratti, Jean-Baptiste [1 ]
Ghermi, Ridouane [1 ]
Jehanno, Paul [1 ]
Jaeger, Alexandre [1 ,5 ]
Alamri, Talal [2 ]
Naccache, Raphael [2 ]
Haddag-Miliani, Leila [2 ]
Orsi, Teresa [2 ]
Lamarque, Jean-Philippe [3 ]
Hoferer, Isaline [2 ,4 ]
Lawrance, Littisha [2 ,4 ]
Benatsou, Baya [2 ,4 ]
Bousaid, Imad [3 ]
Azoulay, Mikael [3 ]
Verdon, Antoine [3 ]
Bidault, Francois [2 ,4 ]
Balleyguier, Corinne [2 ,4 ]
Aubert, Victor [1 ]
Bendjebbar, Etienne [1 ]
Maussion, Charles [1 ]
Loiseau, Nicolas [1 ]
Schmauch, Benoit [1 ]
Sefta, Meriem [1 ]
Wainrib, Gilles [1 ]
Clozel, Thomas [1 ]
Ammari, Samy [2 ,4 ]
Lassau, Nathalie [2 ,4 ]
机构
[1] Owkin Inc, Owkin Lab, New York, NY 10003 USA
[2] Univ Paris Saclay, Dept Imaging, Gustave Roussy, F-94805 Villejuif, France
[3] Univ Paris Saclay, Direct Digital Transformat & Informat Syst, Gustave Roussy, F-94805 Villejuif, France
[4] Univ Paris Saclay, Biomaps, UMR1281 INSERM, CEA,CNRS, F-94805 Villejuif, France
[5] Calypse Consulting, F-75002 Paris, France
关键词
Artificial intelligence; Imaging; Biomarker; Prognosis; Antiangiogenic treatment; Solid tumour; CONTRAST-ENHANCED ULTRASOUND; MULTICENTER; BIOMARKER; OUTCOMES; US;
D O I
10.1016/j.ejca.2022.06.055
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Background: The need for developing new biomarkers is increasing with the emergence of many targeted therapies. Artificial Intelligence (AI) algorithms have shown great promise in the medical imaging field to build predictive models. We developed a prognostic model for solid tumour patients using AI on multimodal data. Patients and methods: Our retrospective study included examinations of patients with seven different cancer types performed between 2003 and 2017 in 17 different hospitals. Radiologists annotated all metastases on baseline computed tomography (CT) and ultrasound (US) images. Imaging features were extracted using AI models and used along with the patients' and treatments' metadata. A Cox regression was fitted to predict prognosis. Performance was assessed on a left-out test set with 1000 bootstraps. Results: The model was built on 436 patients and tested on 196 patients (mean age 59, IQR: 51 -6, 411 men out of 616 patients). On the whole, 1147 US images were annotated with lesions delineation, and 632 thorax-abdomen-pelvis CTs (total of 301,975 slices) were fully annotated with a total of 9516 lesions. The developed model reaches an average concordance index of 0.71 (0.67-0.76, 95% CI). Using the median predicted risk as a threshold value, the model is able to significantly (log-rank test P value < 0.001) isolate high-risk patients from low-risk patients (respective median OS of 11 and 31 months) with a hazard ratio of 3.5 (2.4-5.2, 95% CI). Conclusion: AI was able to extract prognostic features from imaging data, and along with clinical data, allows an accurate stratification of patients' prognoses.
引用
收藏
页码:90 / 98
页数:9
相关论文
共 50 条
  • [21] Clinical Application of Artificial Intelligence in Ultrasound Imaging for Oncology
    Komatsu, Masaaki
    Teraya, Naoki
    Natsume, Takashi
    Harada, Naoaki
    Takeda, Katsuji
    Hamamoto, Ryuji
    JMA JOURNAL, 2024,
  • [22] Artificial intelligence in clinical imaging: a health system approach
    Gilbert, F. J.
    Smye, S. W.
    Schonlieb, C-B.
    CLINICAL RADIOLOGY, 2020, 75 (01) : 3 - 6
  • [23] Harnessing artificial intelligence for predicting breast cancer recurrence: a systematic review of clinical and imaging data
    Jaqueline Alvarenga Silveira
    Alexandre Ray da Silva
    Mariana Zuliani Theodoro de Lima
    Discover Oncology, 16 (1)
  • [24] Artificial intelligence for prediction of COVID-19 progression using CT imaging and clinical data
    Robin Wang
    Zhicheng Jiao
    Li Yang
    Ji Whae Choi
    Zeng Xiong
    Kasey Halsey
    Thi My Linh Tran
    Ian Pan
    Scott A. Collins
    Xue Feng
    Jing Wu
    Ken Chang
    Lin-Bo Shi
    Shuai Yang
    Qi-Zhi Yu
    Jie Liu
    Fei-Xian Fu
    Xiao-Long Jiang
    Dong-Cui Wang
    Li-Ping Zhu
    Xiao-Ping Yi
    Terrance T. Healey
    Qiu-Hua Zeng
    Tao Liu
    Ping-Feng Hu
    Raymond Y. Huang
    Yi-Hui Li
    Ronnie A. Sebro
    Paul J. L. Zhang
    Jianxin Wang
    Michael K. Atalay
    Wei-Hua Liao
    Yong Fan
    Harrison X. Bai
    European Radiology, 2022, 32 : 205 - 212
  • [25] Artificial intelligence for prediction of COVID-19 progression using CT imaging and clinical data
    Wang, Robin
    Jiao, Zhicheng
    Li Yang
    Choi, Ji Whae
    Xiong, Zeng
    Halsey, Kasey
    Tran, Thi My Linh
    Pan, Ian
    Collins, Scott A.
    Feng, Xue
    Wu, Jing
    Chang, Ken
    Shi, Lin-Bo
    Yang, Shuai
    Yu, Qi-Zhi
    Liu, Jie
    Fu, Fei-Xian
    Jiang, Xiao-Long
    Wang, Dong-Cui
    Zhu, Li-Ping
    Yi, Xiao-Ping
    Healey, Terrance T.
    Zeng, Qiu-Hua
    Liu, Tao
    Hu, Ping-Feng
    Huang, Raymond Y.
    Li, Yi-Hui
    Sebro, Ronnie A.
    Zhang, Paul J. L.
    Wang, Jianxin
    Atalay, Michael K.
    Liao, Wei-Hua
    Fan, Yong
    Bai, Harrison X.
    EUROPEAN RADIOLOGY, 2022, 32 (01) : 205 - 212
  • [26] Artificial intelligence predicts sperm motility from sperm fatty
    Witczak, O.
    Andersen, J. M.
    Hicks, S.
    Hammer, H. L.
    Riegler, M. A.
    Haugen, T. B.
    HUMAN REPRODUCTION, 2019, 34 : 200 - 201
  • [27] The role of artificial intelligence to quantify the tumour-stroma ratio for survival in colorectal cancer
    Smit, Marloes A.
    Mesker, Wilma E.
    EBIOMEDICINE, 2020, 61
  • [28] Artificial intelligence in medical imaging: switching from radiographic pathological data to clinically meaningful
    Oren, Ohad
    Gersh, Bernard J.
    Bhatt, Deepak L.
    LANCET DIGITAL HEALTH, 2020, 2 (09): : E486 - E488
  • [29] Challenges in the Use of Artificial Intelligence for Prostate Cancer Diagnosis from Multiparametric Imaging Data
    Corradini, Daniele
    Brizi, Leonardo
    Gaudiano, Caterina
    Bianchi, Lorenzo
    Marcelli, Emanuela
    Golfieri, Rita
    Schiavina, Riccardo
    Testa, Claudia
    Remondini, Daniel
    CANCERS, 2021, 13 (16)
  • [30] Imaging to study solid tumour origin and progression: lessons from research and clinical oncology
    Raimondo, Stefania
    Zito, Giovanni
    IMMUNOLOGY AND CELL BIOLOGY, 2017, 95 (06): : 531 - 537