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Predicting pathological highly invasive lung cancer from preoperative [

Authors :
Yuki, Onozato
Takekazu, Iwata
Yasufumi, Uematsu
Daiki, Shimizu
Takayoshi, Yamamoto
Yukiko, Matsui
Kazuyuki, Ogawa
Junpei, Kuyama
Yuichi, Sakairi
Eiryo, Kawakami
Toshihiko, Iizasa
Ichiro, Yoshino
Source :
European journal of nuclear medicine and molecular imaging.
Publication Year :
2022

Abstract

The efficacy of sublobar resection of primary lung cancer have been proven in recent years. However, sublobar resection for highly invasive lung cancer increases local recurrence. We developed and validated multiple machine learning models predicting pathological invasiveness of lung cancer based on preoperative [Overall, 873 patients who underwent lobectomy or segmentectomy for primary lung cancer were enrolled. Radiomics features were extracted from preoperative PET/CT images with the PyRadiomics package. Seven machine learning models and an ensemble of all models (ENS) were evaluated after 100 iterations. In addition, the probability of highly invasive lung cancer was calculated in a nested cross-validation to assess the calibration plot and clinical usefulness and to compare to consolidation tumour ratio (CTR) on CT images, one of the generally used diagnostic criteria.In the training set, when PET and CT features were combined, all models achieved an area under the curve (AUC) of ≥ 0.880. In the test set, ENS showed the highest mean AUC of 0.880 and smallest standard deviation of 0.0165, and when the cutoff was 0.5, accuracy of 0.804, F1 of 0.851, precision of 0.821, and recall of 0.885. In the nested cross-validation, the AUC of 0.882 (95% CI: 0.860-0.905) showed a high discriminative ability, and the calibration plot indicated consistency with a Brier score of 0.131. A decision curve analysis showed that the ENS was valid with a threshold probability ranging from 3 to 98%. Accuracy showed an improvement of more than 8% over the CTR.The machine learning model based on preoperative [

Details

ISSN :
16197089
Database :
OpenAIRE
Journal :
European journal of nuclear medicine and molecular imaging
Accession number :
edsair.pmid..........d66aea44669e1ada25df2d5fd109b41a