Autocontouring of primary lung lesions and nodal disease for radiotherapy based only on computed tomography images

被引:0
|
作者
Skett, Stephen [1 ]
Patel, Tina [1 ]
Duprez, Didier [2 ]
Gupta, Sunnia [1 ]
Netherton, Tucker [3 ]
Trauernicht, Christoph [2 ]
Aldridge, Sarah [1 ]
Eaton, David [1 ]
Cardenas, Carlos [4 ]
Court, Laurence E. [3 ]
Smith, Daniel [1 ]
Aggarwal, Ajay [1 ]
机构
[1] Guys & St Thomas NHS Fdn Trust, London, England
[2] Stellenbosch Univ, Tygerberg Hosp, Fac Med & Hlth Sci, Cape Town, South Africa
[3] Univ Texas MD Anderson Canc Ctr, Houston, TX 77030 USA
[4] Univ Alabama Birmingham, Hazelrig Salter Radiat Oncol Ctr, Birmingham, AL USA
来源
PHYSICS & IMAGING IN RADIATION ONCOLOGY | 2024年 / 31卷
基金
英国惠康基金;
关键词
Auto-contouring; Lung disease; Radiotherapy; Computed tomography; Deep learning; GTV; SEGMENTATION; CANCER;
D O I
10.1016/j.phro.2024.100637
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Background and purpose: In many clinics, positron-emission tomography is unavailable and clinician time extremely limited. Here we describe a deep-learning model for autocontouring gross disease for patients undergoing palliative radiotherapy for primary lung lesions and/or hilar/mediastinal nodal disease, based only on computed tomography (CT) images. Materials and methods: An autocontouring model (nnU-Net) was trained to contour gross disease in 379 cases (352 training, 27 test); 11 further test cases from an external centre were also included. Anchor-point-based postprocessing was applied to remove extraneous autocontoured regions. The autocontours were evaluated quantitatively in terms of volume similarity (Dice similarity coefficient [DSC], surface Dice coefficient, 95(th) percentile Hausdorff distance [HD95], and mean surface distance), and scored for usability by two consultant oncologists. The magnitude of treatment margin needed to account for geometric discrepancies was also assessed. Results: The anchor point process successfully removed all erroneous regions from the autocontoured disease, and identified two cases to be excluded from further analysis due to 'missed' disease. The average DSC and HD95 were 0.8 +/- 0.1 and 10.5 +/- 7.3 mm, respectively. A 10-mm uniform margin-distance applied to the autocontoured region was found to yield "full coverage" (sensitivity > 0.99) of the clinical contour for 64 % of cases. Ninety-seven percent of evaluated autocontours were scored by both clinicians as requiring no or minor edits. Conclusions: Our autocontouring model was shown to produce clinically usable disease outlines, based on CT alone, for approximately two-thirds of patients undergoing lung radiotherapy. Further work is necessary to improve this before clinical implementation.
引用
收藏
页数:5
相关论文
共 50 条
  • [41] Knowledge-based segmentation of thoracic computed tomography images for assessment of split lung function
    Brown, MS
    Goldin, JG
    McNitt-Gray, MF
    Greaser, LE
    Sapra, A
    Li, KT
    Sayre, JW
    Martin, K
    Aberle, DR
    MEDICAL PHYSICS, 2000, 27 (03) : 592 - 598
  • [42] Automatic Diagnosis of Hepatocellular Carcinoma and Metastases Based on Computed Tomography Images
    Zossou, Vincent-Beni Sena
    Gnangnon, Freddy Houehanou Rodrigue
    Biaou, Olivier
    de Vathaire, Florent
    Allodji, Rodrigue S.
    Ezin, Eugene C.
    JOURNAL OF IMAGING INFORMATICS IN MEDICINE, 2024, : 873 - 886
  • [43] Differential diagnoses of cavitary lung lesions on computed tomography: a pictorial essay
    Amine Naggar
    Khadija Laasri
    Kenza Berrada
    Badr Kabila
    Omar El Aoufir
    Fatima Zahra Laamrani
    Laila Jroundi
    Egyptian Journal of Radiology and Nuclear Medicine, 54
  • [44] Differential diagnoses of cavitary lung lesions on computed tomography: a pictorial essay
    Naggar, Amine
    Laasri, Khadija
    Berrada, Kenza
    Kabila, Badr
    El Aoufir, Omar
    Laamrani, Fatima Zahra
    Jroundi, Laila
    EGYPTIAN JOURNAL OF RADIOLOGY AND NUCLEAR MEDICINE, 2023, 54 (01)
  • [45] Localization of Colorectal Cancer Lesions in Contrast-Computed Tomography Images via a Deep Learning Approach
    Sahoo, Prasan Kumar
    Gupta, Pushpanjali
    Lai, Ying-Chieh
    Chiang, Sum-Fu
    You, Jeng-Fu
    Onthoni, Djeane Debora
    Chern, Yih-Jong
    BIOENGINEERING-BASEL, 2023, 10 (08):
  • [46] Radiomic features analysis in computed tomography images of lung nodule classification
    Chen, Chia-Hung
    Chang, Chih-Kun
    Tu, Chih-Yen
    Liao, Wei-Chih
    Wu, Bing-Ru
    Chou, Kuei-Ting
    Chiou, Yu-Rou
    Yang, Shih-Neng
    Zhang, Geoffrey
    Huang, Tzung-Chi
    PLOS ONE, 2018, 13 (02):
  • [47] Lung Nodule Classification on Computed Tomography Images Using Deep Learning
    Amrita Naik
    Damodar Reddy Edla
    Wireless Personal Communications, 2021, 116 : 655 - 690
  • [48] Deep Learning Based Staging of Bone Lesions From Computed Tomography Scans
    Masoudi, Samira
    Mehralivand, Sherif
    Harmon, Stephanie A.
    Lay, Nathan
    Lindenberg, Liza
    Mena, Esther
    Pinto, Peter A.
    Citrin, Deborah E.
    Gulley, James L.
    Wood, Bradford J.
    Dahut, William L.
    Madan, Ravi A.
    Bagci, Ulas
    Choyke, Peter L.
    Turkbey, Baris
    IEEE ACCESS, 2021, 9 : 87531 - 87542
  • [49] Challenges and opportunities in the development and clinical implementation of artificial intelligence based synthetic computed tomography for magnetic resonance only radiotherapy
    Villegas, Fernanda
    Dal Bello, Riccardo
    Alvarez-Andres, Emilie
    Dhont, Jennifer
    Janssen, Tomas
    Milan, Lisa
    Robert, Charlotte
    Salagean, Ghizela-Ana-Maria
    Tejedor, Natalia
    Trnkova, Petra
    Fusella, Marco
    Placidi, Lorenzo
    Cusumano, Davide
    RADIOTHERAPY AND ONCOLOGY, 2024, 198
  • [50] Automatic Lung Nodules Detection In Computed Tomography Images Using Nodule Filtering And Neural Networks
    Talebpour, A. R.
    Hemmati, H. R.
    Hosseinian, M. Zarif
    2014 22ND IRANIAN CONFERENCE ON ELECTRICAL ENGINEERING (ICEE), 2014, : 1883 - 1887