Literature DB >> 33276433

Incidence Lung Cancer after a Negative CT Screening in the National Lung Screening Trial: Deep Learning-Based Detection of Missed Lung Cancers.

Jungheum Cho1, Jihang Kim1, Kyong Joon Lee1,2, Chang Mo Nam2, Sung Hyun Yoon1, Hwayoung Song1, Junghoon Kim1, Ye Ra Choi3, Kyung Hee Lee1,4, Kyung Won Lee1.   

Abstract

We aimed to analyse the CT examinations of the previous screening round (CTprev) in NLST participants with incidence lung cancer and evaluate the value of DL-CAD in detection of missed lung cancers. Thoracic radiologists reviewed CTprev in participants with incidence lung cancer, and a DL-CAD analysed CTprev according to NLST criteria and the lung CT screening reporting & data system (Lung-RADS) classification. We calculated patient-wise and lesion-wise sensitivities of the DL-CAD in detection of missed lung cancers. As per the NLST criteria, 88% (100/113) of CTprev were positive and 74 of them had missed lung cancers. The DL-CAD reported 98% (98/100) of the positive screens as positive and detected 95% (70/74) of the missed lung cancers. As per the Lung-RADS classification, 82% (93/113) of CTprev were positive and 60 of them had missed lung cancers. The DL-CAD reported 97% (90/93) of the positive screens as positive and detected 98% (59/60) of the missed lung cancers. The DL-CAD made false positive calls in 10.3% (27/263) of controls, with 0.16 false positive nodules per scan (41/263). In conclusion, the majority of CTprev in participants with incidence lung cancers had missed lung cancers, and the DL-CAD detected them with high sensitivity and a limited false positive rate.

Entities:  

Keywords:  computer-aided diagnosis; deep learning; early detection of cancer; lung neoplasms; multidetector computed tomography

Year:  2020        PMID: 33276433     DOI: 10.3390/jcm9123908

Source DB:  PubMed          Journal:  J Clin Med        ISSN: 2077-0383            Impact factor:   4.241


  2 in total

1.  Diagnostic study on clinical feasibility of an AI-based diagnostic system as a second reader on mobile CT images: a preliminary result.

Authors:  Kaiyue Diao; Yuntian Chen; Ying Liu; Bo-Jiang Chen; Wan-Jiang Li; Lin Zhang; Ya-Li Qu; Tong Zhang; Yun Zhang; Min Wu; Kang Li; Bin Song
Journal:  Ann Transl Med       Date:  2022-06

Review 2.  Radiologic Assessment of Osteosarcoma Lung Metastases: State of the Art and Recent Advances.

Authors:  Anna Maria Chiesa; Paolo Spinnato; Marco Miceli; Giancarlo Facchini
Journal:  Cells       Date:  2021-03-04       Impact factor: 6.600

  2 in total

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