Automatic segmentation of human knee anatomy by a convolutional neural network applying a 3D MRI protocol

被引:18
|
作者
Kulseng, Carl Petter Skaar [1 ]
Nainamalai, Varatharajan [2 ]
Grovik, Endre [3 ,4 ]
Geitung, Jonn-Terje [1 ,5 ,6 ]
Aroen, Asbjorn [7 ,8 ]
Gjesdal, Kjell-Inge [1 ,2 ,6 ]
机构
[1] Sunnmore MR Klin, Langelandsvegen 15, N-6010 Alesund, Norway
[2] Norwegian Univ Sci & Technol, Larsgaardvegen 2, N-6025 Alesund, Norway
[3] Norwegian Univ Sci & Technol, Hogskoleringen 5, N-7491 Trondheim, Norway
[4] More & Romsdal Hosp Trust, Postboks 1600, N-6025 Alesund, Norway
[5] Univ Oslo, Fac Med, Klaus Torgards Vei 3, N-0372 Oslo, Norway
[6] Akershus Univ Hosp, Dept Radiol, Postboks 1000, N-1478 Lorenskog, Norway
[7] Akershus Univ Hosp, Inst Clin Med, Dept Orthoped Surg, Problemveien 7, N-0315 Oslo, Norway
[8] Norwegian Sch Sport Sci, Oslo Sports Trauma Res Ctr, Postboks 4014, N-0806 Oslo, Norway
关键词
Magnetic Resonance Imaging; Musculoskeletal; Deep learning; Knee images segmentation; Visualization;
D O I
10.1186/s12891-023-06153-y
中图分类号
R826.8 [整形外科学]; R782.2 [口腔颌面部整形外科学]; R726.2 [小儿整形外科学]; R62 [整形外科学(修复外科学)];
学科分类号
摘要
BackgroundTo study deep learning segmentation of knee anatomy with 13 anatomical classes by using a magnetic resonance (MR) protocol of four three-dimensional (3D) pulse sequences, and evaluate possible clinical usefulness.MethodsThe sample selection involved 40 healthy right knee volumes from adult participants. Further, a recently injured single left knee with previous known ACL reconstruction was included as a test subject. The MR protocol consisted of the following 3D pulse sequences: T1 TSE, PD TSE, PD FS TSE, and Angio GE. The DenseVNet neural network was considered for these experiments. Five input combinations of sequences (i) T1, (ii) T1 and FS, (iii) PD and FS, (iv) T1, PD, and FS and (v) T1, PD, FS and Angio were trained using the deep learning algorithm. The Dice similarity coefficient (DSC), Jaccard index and Hausdorff were used to compare the performance of the networks.ResultsCombining all sequences collectively performed significantly better than other alternatives. The following DSCs (+/- standard deviation) were obtained for the test dataset: Bone medulla 0.997 (+/- 0.002), PCL 0.973 (+/- 0.015), ACL 0.964 (+/- 0.022), muscle 0.998 (+/- 0.001), cartilage 0.966 (+/- 0.018), bone cortex 0.980 (+/- 0.010), arteries 0.943 (+/- 0.038), collateral ligaments 0.919 (+/- 0.069), tendons 0.982 (+/- 0.005), meniscus 0.955 (+/- 0.032), adipose tissue 0.998 (+/- 0.001), veins 0.980 (+/- 0.010) and nerves 0.921 (+/- 0.071). The deep learning network correctly identified the anterior cruciate ligament (ACL) tear of the left knee, thus indicating a future aid to orthopaedics.ConclusionsThe convolutional neural network proves highly capable of correctly labeling all anatomical structures of the knee joint when applied to 3D MR sequences. We have demonstrated that this deep learning model is capable of automatized segmentation that may give 3D models and discover pathology. Both useful for a preoperative evaluation.
引用
收藏
页数:12
相关论文
共 50 条
  • [1] Automatic segmentation of human knee anatomy by a convolutional neural network applying a 3D MRI protocol
    Carl Petter Skaar Kulseng
    Varatharajan Nainamalai
    Endre Grøvik
    Jonn-Terje Geitung
    Asbjørn Årøen
    Kjell-Inge Gjesdal
    BMC Musculoskeletal Disorders, 24
  • [2] The utility of automatic segmentation of kidney MRI in chronic kidney disease using a 3D convolutional neural network
    Kaiji Inoue
    Yuki Hara
    Keita Nagawa
    Masahiro Koyama
    Hirokazu Shimizu
    Koichiro Matsuura
    Masao Takahashi
    Iichiro Osawa
    Tsutomu Inoue
    Hirokazu Okada
    Masahiro Ishikawa
    Naoki Kobayashi
    Eito Kozawa
    Scientific Reports, 13
  • [3] The utility of automatic segmentation of kidney MRI in chronic kidney disease using a 3D convolutional neural network
    Inoue, Kaiji
    Hara, Yuki
    Nagawa, Keita
    Koyama, Masahiro
    Shimizu, Hirokazu
    Matsuura, Koichiro
    Takahashi, Masao
    Osawa, Iichiro
    Inoue, Tsutomu
    Okada, Hirokazu
    Ishikawa, Masahiro
    Kobayashi, Naoki
    Kozawa, Eito
    SCIENTIFIC REPORTS, 2023, 13 (01)
  • [4] Deep convolutional neural network for segmentation of knee joint anatomy
    Zhou, Zhaoye
    Zhao, Gengyan
    Kijowski, Richard
    Liu, Fang
    MAGNETIC RESONANCE IN MEDICINE, 2018, 80 (06) : 2759 - 2770
  • [5] SaltSeg: Automatic 3D salt segmentation using a deep convolutional neural network
    Shi, Yunzhi
    Wu, Xinming
    Fomel, Sergey
    INTERPRETATION-A JOURNAL OF SUBSURFACE CHARACTERIZATION, 2019, 7 (03): : SE113 - SE122
  • [6] Automatic Segmentation of 3D Ultrasound Spine Curvature Using Convolutional Neural Network
    Banerjee, Sunetra
    Ling, Sai Ho
    Lyu, Juan
    Su, Steven
    Zheng, Yong-Ping
    42ND ANNUAL INTERNATIONAL CONFERENCES OF THE IEEE ENGINEERING IN MEDICINE AND BIOLOGY SOCIETY: ENABLING INNOVATIVE TECHNOLOGIES FOR GLOBAL HEALTHCARE EMBC'20, 2020, : 2039 - 2042
  • [7] Automatic segmentation of the uterus on MRI using a convolutional neural network
    Kurata, Yasuhisa
    Nishio, Mizuho
    Kido, Aki
    Fujimoto, Koji
    Yakami, Masahiro
    Isoda, Hiroyoshi
    Togashi, Kaori
    COMPUTERS IN BIOLOGY AND MEDICINE, 2019, 114
  • [8] Automatic 3D liver location and segmentation via convolutional neural network and graph cut
    Lu, Fang
    Wu, Fa
    Hu, Peijun
    Peng, Zhiyi
    Kong, Dexing
    INTERNATIONAL JOURNAL OF COMPUTER ASSISTED RADIOLOGY AND SURGERY, 2017, 12 (02) : 171 - 182
  • [9] 3D U-TFA: A deep convolutional neural network for automatic segmentation of glioblastoma
    Wu, Shang
    Chen, Zhencheng
    Sun, Peng
    BIOMEDICAL SIGNAL PROCESSING AND CONTROL, 2025, 99
  • [10] Automatic 3D liver location and segmentation via convolutional neural network and graph cut
    Fang Lu
    Fa Wu
    Peijun Hu
    Zhiyi Peng
    Dexing Kong
    International Journal of Computer Assisted Radiology and Surgery, 2017, 12 : 171 - 182