4.5 Article

Longitudinal prediction of lung nodule invasiveness by sequential modelling with common clinical computed tomography (CT) measurements: a prediction accuracy study

Journal

TRANSLATIONAL LUNG CANCER RESEARCH
Volume 11, Issue 5, Pages 845-857

Publisher

AME PUBLISHING COMPANY
DOI: 10.21037/tlcr-22-319

Keywords

Lung nodule; tumor invasiveness; follow-up computed tomography (follow-up CT); sequential modeling; long short-term memory (LSTM)

Funding

  1. National Natural Science Foundation of China [81871353, 82071873]
  2. Shanghai Municipal Health Commission Project [2019SY063, 20204Y0201]
  3. Shanghai Key Laboratory Open Project [STCSM18DZ2270700]
  4. Shanghai Rising Stars of Medical Talents Youth Development Program [SHWSRS(2021)_099]
  5. China International Medical Foundation [Z-2014-07-2003-20]

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This study utilized longitudinal data of lung nodules and applied sequential modeling using long short-term memory (LSTM) networks to accurately predict nodule invasiveness. The results showed that the LSTM-based classifier outperformed the logistic regression (LR) baseline classifier in predicting invasiveness. This research approach warrants further investigation for improving the management of lung nodules.
Background: Accurate preoperative prediction of the invasiveness of lung nodules on computed tomography (CT) can avoid unnecessary invasive procedures and costs for low-risk patients. While previous studies approached this task using cross-sectional data, this study aimed to utilize the commonly available longitudinal data of lung nodules through sequential modeling based on long short-term memory (LSTM) networks. Methods: We retrospectively included 171 patients with lung nodules that were followed-up at least once and pathologically diagnosed with adenocarcinoma for model development. Pathological diagnosis was the gold standard for deciding lung nodule invasiveness. For each nodule, a handful of semantic features, including size intensity and interval since first discovery, were obtained from an arbitrary number of CT scans available to individual patients and used as input variables to pre-operatively predict nodule invasiveness. The LSTM-based classifier was optimized by extensive experiments and compared to logistic regression (LR) as baseline with five-fold cross-validation. Results: The best LSTM-based classifier, capable of receiving data from an arbitrary number of time points, achieved better preoperative prediction of lung nodule invasiveness [area under the curve (AUC), 0.982; accuracy, 0.924; sensitivity, 0.946; specificity, 0.881] than the best LR (AUC, 0.947; accuracy, 0.906; sensitivity, 0.938; specificity, 0.847) classifier. Conclusions: The longitudinal data of lung nodules, though unevenly spaced and varying in length, can be well modeled by the LSTM, allowing for the accurate prediction of nodule invasiveness. Given that the input variables of the sequential modelling consist of a few semantic features that are easily obtained and interpreted by clinicians, our approach is worthy further investigation for the optimal management of lung nodules.

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