Abstract 364P
Background
Lung cancer treatment gets on the stage of precision medicine. Histopathological classification of lung cancer is crucial in determining optimum treatment. Artificial intelligence (AI) models have been widely shown to be useful in pathological diagnosis and we previously established a reliable AI model to detect the presence of lung cancer on whole slide images (WSIs). However, AI models for the differentiation of major histological types of lung cancer, such as adenocarcinoma (ADC), squamous cell carcinoma (SCC) and small-cell lung cancer (SCLC), are yet to be established.
Methods
We trained a convolution neural network (CNN) based on the EfficientNet-B1 architecture to classify ADC, SCC, SCLC, and non-neoplastic lesion from biopsy specimen WSIs (70, 23, 12 and 171 specimens with ADC, SCC, SCLC and non-neoplastic lesion, respectively) using a training dataset of 276 images of which 60 were reserved for validation. The WSIs were manually annotated by pathologists by drawing around the regions that contain each subtype. We used a transfer learning approach, in which the starting weights were obtained from a pre-trained model on ImageNet. The model was then trained on our dataset using a supervised learning approach. To classify a WSI, the model was applied in a sliding window fashion with an input tile size of 224x224 and a stride of 128 on a magnification of x10. The maximum probability was then used as a WSI diagnosis.
Results
We evaluated our model on a total of 533 WSIs that only had WSI diagnoses. The model achieved a Receiver Operator Curve Area Under the Curves of 0.888 (CI 0.872-0.9075), 0.8913 (CI 0.8596-0.9221), 0.9526 (CI 0.9276-0.9646) for ADC, SCC, and SCLC, respectively.
Conclusions
The obtained results on a large test set are a promising first step towards developing a model for the classification of lung cancer. Our model was only trained on a small dataset of 276 WSIs; however, we hope that the model would be further improved with the collection of additional annotated WSIs for training. Having a high performing model could help reduce the burden on pathologists and be useful for the decision of optimum treatment strategies, such as molecular-targeted therapy, immunotherapy and chemotherapy, according to the histological types of lung cancer.
Clinical trial identification
Editorial acknowledgement
Legal entity responsible for the study
The authors.
Funding
Has not received any funding.
Disclosure
All authors have declared no conflicts of interest.
Resources from the same session
104P - Safety and efficacy of HLX04 versus reference bevacizumab in combination with XELOX or mFOLFOX6 as first-line treatment for metastatic colorectal cancer: A randomised, double-blind phase III study
Presenter: Shukui Qin
Session: e-Poster Display Session
105P - Prospective, open-label, observational study of cetuximab for metastatic colorectal carcinoma (mCRC): The OPTIM1SE study
Presenter: Tsai-Sheng Yang
Session: e-Poster Display Session
106P - Efficacy and tolerability of capecitabine and mitomycin-C based concurrent radiotherapy in patients with anal canal cancer
Presenter: Prabhat Bhargava
Session: e-Poster Display Session
107P - Safety and efficacy of trifluridine/tipiracil (FTD/TPI) in previously treated metastatic colorectal cancer (mCRC): Results from the Australian cohort of the phase IIIb, international, open-label, early-access PRECONNECT study
Presenter: Timothy Price
Session: e-Poster Display Session
108P - Comparative analysis of two-stage hepatectomy and enhanced one-stage hepatectomy in the setting of bilobar colorectal liver metastases
Presenter: Hayk Torgomyan
Session: e-Poster Display Session
109P - Efficacy and safety of biweekly or triweekly XELOX regimen for adjuvant chemotherapy of colorectal cancer
Presenter: hangyu zhang
Session: e-Poster Display Session
110P - Analysis for stereotactic body radiotherapy (SBRT) effect for colorectal liver metastases
Presenter: Wei Zou
Session: e-Poster Display Session
111P - A meta-analysis study on safety and effectiveness comparison between FOLFOX and XELOX regiments on advanced stage colorectal cancer
Presenter: Ida Bagus Budhi
Session: e-Poster Display Session
112P - Pembrolizumab vs chemotherapy in patients with microsatellite instability-high/mismatch repair deficient metastatic colorectal cancer: Asia subgroup results of the phase III KEYNOTE-177 study
Presenter: Takayuki Yoshino
Session: e-Poster Display Session
122P - Nomogram to predict short-term effect of radiotherapy based on pre/post-treatment inflammatory biomarkers and their dynamic changes in esophageal squamous cell carcinoma
Presenter: Shuai Liang
Session: e-Poster Display Session