4.8 Article

Assessing PD-L1 expression in non-small cell lung cancer and predicting responses to immune checkpoint inhibitors using deep learning on computed tomography images

期刊

THERANOSTICS
卷 11, 期 5, 页码 2098-2107

出版社

IVYSPRING INT PUBL
DOI: 10.7150/thno.48027

关键词

PD-L1 expression; deep learning; computed tomography; immunotherapy; non-small cell lung cancer

资金

  1. National Natural Science Foundation of China [91859203, 82072598, 81871890, 82022036, 91959130, 81971776, 81771924, 81930053]
  2. National Key R&D Program of China [2017YFC0910004, 2017YFC1308700, 2017YFA0205200, 2017YFC1309100, 2017ZX10103004012]
  3. Beijing Natural Science Foundation [L182061]
  4. Strategic Priority Research Program of Chinese Academy of Sciences [XDB 38040200]
  5. Instrument Developing Project of the Chinese Academy of Sciences [YZ201502]
  6. Project of High-Level Talents Team Introduction in Zhuhai City [Zhuhai HLHPTP201703]
  7. Youth Innovation Promotion Association CAS [2017175]
  8. International scientific and technological innovation cooperation of Sichuan Province [2018HH0161]

向作者/读者索取更多资源

This study utilized a deep learning model to analyze CT images for assessing PD-L1 expression in NSCLC and predicting immunotherapy response. The results showed that PD-L1ES could predict high PD-L1 expression and was associated with clinical outcomes in patients. Combining PD-L1ES with a clinical model improved the prediction of immunotherapy response.
Rationale: This study aimed to use computed tomography (CT) images to assess PD-L1 expression in non-small cell lung cancer (NSCLC) and predict response to immunotherapy. Methods: We retrospectively analyzed a PD-L1 expression dataset that consisted of 939 consecutive stage IIIB-IV NSCLC patients with pretreatment CT images. A deep convolutional neural network was trained and optimized with CT images from the training cohort (n = 750) and validation cohort (n = 93) to obtain a PD-L1 expression signature (PD-L1ES), which was evaluated using the test cohort (n = 96). Finally, a separate immunotherapy cohort (n = 94) was used to assess the prognostic value of PD-L1ES with respect to clinical outcome. Results: PD-L1ES was able to predict high PD-L1 expression (PD-L1 >= 50%) with areas under the receiver operating characteristic curve (AUC) of 0.78 (95% confidence interval (CI): 0.75 similar to 0.80), 0.71 (95% CI: 0.59 similar to 0.81), and 0.76 (95% CI: 0.66 similar to 0.85) in the training, validation, and test cohorts, respectively. In patients treated with anti-PD-1 antibody, low PD-L1ES was associated with improved progression-free survival (PFS) (median PFS 363 days in low score group vs 183 days in high score group; hazard ratio [HR]: 2.57, 95% CI: 1.22 similar to 5.44; P = 0.010). Additionally, when PD-L1ES was combined with a clinical model that was trained using age, sex, smoking history and family history of malignancy, the response to immunotherapy could be better predicted compared to either PD-L1ES or the clinical model alone. Conclusions: The deep learning model provides a noninvasive method to predict high PD-L1 expression of NSCLC and to infer clinical outcomes in response to immunotherapy. Additionally, this deep learning model combined with clinical models demonstrated improved stratification capabilities.

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