MRI-based radiomics in breast cancer: feature robustness with respect to inter-observer segmentation variability

被引:0
|
作者
R. W. Y. Granzier
N. M. H. Verbakel
A. Ibrahim
J. E. van Timmeren
T. J. A. van Nijnatten
R. T. H. Leijenaar
M. B. I. Lobbes
M. L. Smidt
H. C. Woodruff
机构
[1] Maastricht University Medical Center+,Department of Surgery
[2] Maastricht University,GROW – School for Oncology and Developmental Biology
[3] Maastricht University Medical Center+,Department of Radiology and Nuclear Medicine
[4] Maastricht University,The D
[5] Hospital Center Universitaire De Liege,Lab, Department of Precision Medicine
[6] University Hospital RWTH Aachen University,Division of Nuclear Medicine and Oncological Imaging, Department of Medical Physics
[7] Zuyderland Medical Center,Department of Nuclear Medicine and Comprehensive Diagnostic Center Aachen (CDCA)
来源
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Radiomics is an emerging field using the extraction of quantitative features from medical images for tissue characterization. While MRI-based radiomics is still at an early stage, it showed some promising results in studies focusing on breast cancer patients in improving diagnoses and therapy response assessment. Nevertheless, the use of radiomics raises a number of issues regarding feature quantification and robustness. Therefore, our study aim was to determine the robustness of radiomics features extracted by two commonly used radiomics software with respect to variability in manual breast tumor segmentation on MRI. A total of 129 histologically confirmed breast tumors were segmented manually in three dimensions on the first post-contrast T1-weighted MR exam by four observers: a dedicated breast radiologist, a resident, a Ph.D. candidate, and a medical student. Robust features were assessed using the intraclass correlation coefficient (ICC > 0.9). The inter-observer variability was evaluated by the volumetric Dice Similarity Coefficient (DSC). The mean DSC for all tumors was 0.81 (range 0.19–0.96), indicating a good spatial overlap of the segmentations based on observers of varying expertise. In total, 41.6% (552/1328) and 32.8% (273/833) of all RadiomiX and Pyradiomics features, respectively, were identified as robust and were independent of inter-observer manual segmentation variability.
引用
收藏
相关论文
共 50 条
  • [31] Atlas-based segmentation technique incorporating inter-observer delineation uncertainty for whole breast
    Bell, L. R.
    Dowling, J. A.
    Pogson, E. M.
    Metcalfe, P.
    Holloway, L.
    MICRO-MINI & NANO-DOSIMETRY & INNOVATIVE TECHNOLOGIES IN RADIATION THERAPY (MMND&ITRO2016), 2017, 777
  • [32] MRI-Based Deep Learning Segmentation and Radiomics of Sarcoma in Mice
    Holbrook, M. D.
    Blocker, S. J.
    Mowery, Y. M.
    Badea, A.
    Qi, Y.
    Xu, E. S.
    Kirsch, D. G.
    Johnson, G. A.
    Badea, C. T.
    TOMOGRAPHY, 2020, 6 (01) : 23 - 33
  • [33] Challenge of prostate MRI segmentation on T2-weighted images: inter-observer variability and impact of prostate morphology
    Montagne, Sarah
    Hamzaoui, Dimitri
    Allera, Alexandre
    Ezziane, Malek
    Luzurier, Anna
    Quint, Raphaelle
    Kalai, Mehdi
    Ayache, Nicholas
    Delingette, Herve
    Renard-Penna, Raphaele
    INSIGHTS INTO IMAGING, 2021, 12 (01)
  • [34] Challenge of prostate MRI segmentation on T2-weighted images: inter-observer variability and impact of prostate morphology
    Sarah Montagne
    Dimitri Hamzaoui
    Alexandre Allera
    Malek Ezziane
    Anna Luzurier
    Raphaelle Quint
    Mehdi Kalai
    Nicholas Ayache
    Hervé Delingette
    Raphaële Renard-Penna
    Insights into Imaging, 12
  • [35] Definition of gross tumor volume in lung cancer: inter-observer variability
    Van de Steene, J
    Linthout, N
    de Mey, J
    Vinh-Hung, V
    Claassens, C
    Noppen, M
    Bel, A
    Storme, G
    RADIOTHERAPY AND ONCOLOGY, 2002, 62 (01) : 37 - 49
  • [36] Assessing sizes of breast cancers that show non-mass enhancement on MRI based on inter-observer variability and comparison with pathology size
    Koh, Jieun
    Park, Ah Young
    Ko, Kyung Hee
    Kim, Sewha
    Jung, Hae Kyoung
    ACTA RADIOLOGICA, 2019, 60 (09) : 1102 - 1109
  • [37] Influence of Manual Inter-Observer Variability for the Performance of Deep Learning Models in Semantic Segmentation
    Stoean, Catalin
    Bacanin, Nebojsa
    Stoean, Ruxandra
    Ionescu, Leonard
    Garau, Alina-Maria
    Ghitescu, Cristina-Camelia
    2023 25TH INTERNATIONAL SYMPOSIUM ON SYMBOLIC AND NUMERIC ALGORITHMS FOR SCIENTIFIC COMPUTING, SYNASC 2023, 2023, : 266 - 273
  • [38] Inter-observer variability in seroma contouring for partial breast radiotherapy: Impact of guidelines
    Wong, E. K.
    Truong, P. T.
    Kader, H. A.
    Salter, L.
    Petersen, R.
    Nichol, A.
    Wai, E.
    Weir, L.
    Aquino-Parsons, C.
    Olivotto, I.
    RADIOTHERAPY AND ONCOLOGY, 2006, 80 : S17 - S17
  • [39] Inter-observer variability in seroma contouring for partial breast radiotherapy: Impact of guidelines
    Wong, E. K.
    Truong, P. T.
    Kader, H. A.
    Nichol, A. M.
    Salter, L.
    Petersen, R.
    Wai, E. S.
    Weir, L.
    Olivotto, I. A.
    INTERNATIONAL JOURNAL OF RADIATION ONCOLOGY BIOLOGY PHYSICS, 2006, 66 (03): : S237 - S237
  • [40] Value of respiratory gating compared to inter-observer variability for tumours of the left breast
    Heuberger, J.
    Khan, S.
    Raphael, M.
    Lutters, G.
    Bodis, S.
    RADIOTHERAPY AND ONCOLOGY, 2006, 81 : S232 - S232