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Leveraging Serial Low-Dose CT Scans in Radiomics-based Reinforcement Learning to Improve Early Diagnosis of Lung Cancer at Baseline Screening.
Wang, Yifan; Zhou, Chuan; Ying, Lei; Lee, Elizabeth; Chan, Heang-Ping; Chughtai, Aamer; Hadjiiski, Lubomir M; Kazerooni, Ella A.
Affiliation
  • Wang Y; From the Departments of Radiology (Y.W., C.Z., E.L., H.P.C., A.C., L.M.H., E.A.K.) and Internal Medicine (E.A.K.), The University of Michigan Medical School, 1500 E Medical Center Dr, Medical Inn Building, Rm C479, Ann Arbor, MI 48109-0904; Department of Electrical Engineering and Computer Science,
  • Zhou C; From the Departments of Radiology (Y.W., C.Z., E.L., H.P.C., A.C., L.M.H., E.A.K.) and Internal Medicine (E.A.K.), The University of Michigan Medical School, 1500 E Medical Center Dr, Medical Inn Building, Rm C479, Ann Arbor, MI 48109-0904; Department of Electrical Engineering and Computer Science,
  • Ying L; From the Departments of Radiology (Y.W., C.Z., E.L., H.P.C., A.C., L.M.H., E.A.K.) and Internal Medicine (E.A.K.), The University of Michigan Medical School, 1500 E Medical Center Dr, Medical Inn Building, Rm C479, Ann Arbor, MI 48109-0904; Department of Electrical Engineering and Computer Science,
  • Lee E; From the Departments of Radiology (Y.W., C.Z., E.L., H.P.C., A.C., L.M.H., E.A.K.) and Internal Medicine (E.A.K.), The University of Michigan Medical School, 1500 E Medical Center Dr, Medical Inn Building, Rm C479, Ann Arbor, MI 48109-0904; Department of Electrical Engineering and Computer Science,
  • Chan HP; From the Departments of Radiology (Y.W., C.Z., E.L., H.P.C., A.C., L.M.H., E.A.K.) and Internal Medicine (E.A.K.), The University of Michigan Medical School, 1500 E Medical Center Dr, Medical Inn Building, Rm C479, Ann Arbor, MI 48109-0904; Department of Electrical Engineering and Computer Science,
  • Chughtai A; From the Departments of Radiology (Y.W., C.Z., E.L., H.P.C., A.C., L.M.H., E.A.K.) and Internal Medicine (E.A.K.), The University of Michigan Medical School, 1500 E Medical Center Dr, Medical Inn Building, Rm C479, Ann Arbor, MI 48109-0904; Department of Electrical Engineering and Computer Science,
  • Hadjiiski LM; From the Departments of Radiology (Y.W., C.Z., E.L., H.P.C., A.C., L.M.H., E.A.K.) and Internal Medicine (E.A.K.), The University of Michigan Medical School, 1500 E Medical Center Dr, Medical Inn Building, Rm C479, Ann Arbor, MI 48109-0904; Department of Electrical Engineering and Computer Science,
  • Kazerooni EA; From the Departments of Radiology (Y.W., C.Z., E.L., H.P.C., A.C., L.M.H., E.A.K.) and Internal Medicine (E.A.K.), The University of Michigan Medical School, 1500 E Medical Center Dr, Medical Inn Building, Rm C479, Ann Arbor, MI 48109-0904; Department of Electrical Engineering and Computer Science,
Radiol Cardiothorac Imaging ; 6(3): e230196, 2024 Jun.
Article in En | MEDLINE | ID: mdl-38752718
ABSTRACT
Purpose To evaluate the feasibility of leveraging serial low-dose CT (LDCT) scans to develop a radiomics-based reinforcement learning (RRL) model for improving early diagnosis of lung cancer at baseline screening. Materials and Methods In this retrospective study, 1951 participants (female patients, 822; median age, 61 years [range, 55-74 years]) (male patients, 1129; median age, 62 years [range, 55-74 years]) were randomly selected from the National Lung Screening Trial between August 2002 and April 2004. An RRL model using serial LDCT scans (S-RRL) was trained and validated using data from 1404 participants (372 with lung cancer) containing 2525 available serial LDCT scans up to 3 years. A baseline RRL (B-RRL) model was trained with only LDCT scans acquired at baseline screening for comparison. The 547 held-out individuals (150 with lung cancer) were used as an independent test set for performance evaluation. The area under the receiver operating characteristic curve (AUC) and the net reclassification index (NRI) were used to assess the performances of the models in the classification of screen-detected nodules. Results Deployment to the held-out baseline scans showed that the S-RRL model achieved a significantly higher test AUC (0.88 [95% CI 0.85, 0.91]) than both the Brock model (AUC, 0.84 [95% CI 0.81, 0.88]; P = .02) and the B-RRL model (AUC, 0.86 [95% CI 0.83, 0.90]; P = .02). Lung cancer risk stratification was significantly improved by the S-RRL model as compared with Lung CT Screening Reporting and Data System (NRI, 0.29; P < .001) and the Brock model (NRI, 0.12; P = .008). Conclusion The S-RRL model demonstrated the potential to improve early diagnosis and risk stratification for lung cancer at baseline screening as compared with the B-RRL model and clinical models. Keywords Radiomics-based Reinforcement Learning, Lung Cancer Screening, Low-Dose CT, Machine Learning © RSNA, 2024 Supplemental material is available for this article.
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Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Tomography, X-Ray Computed / Early Detection of Cancer / Lung Neoplasms Limits: Aged / Female / Humans / Male / Middle aged Language: En Journal: Radiol Cardiothorac Imaging Year: 2024 Document type: Article Country of publication: Estados Unidos

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Tomography, X-Ray Computed / Early Detection of Cancer / Lung Neoplasms Limits: Aged / Female / Humans / Male / Middle aged Language: En Journal: Radiol Cardiothorac Imaging Year: 2024 Document type: Article Country of publication: Estados Unidos