Machine learning-based amide proton transfer imaging using partially synthetic training data

被引:3
|
作者
Viswanathan, Malvika [1 ,2 ]
Yin, Leqi [3 ]
Kurmi, Yashwant [1 ,4 ]
Zu, Zhongliang [1 ,2 ,4 ,5 ]
机构
[1] Vanderbilt Univ, Med Ctr, Vanderbilt Univ Inst Imaging Sci, Nashville, TN 37232 USA
[2] Vanderbilt Univ, Dept Biomed Engn, Nashville, TN 37232 USA
[3] Vanderbilt Univ, Sch Engn, Nashville, TN 37232 USA
[4] Vanderbilt Univ, Med Ctr, Dept Radiol & Radiol Sci, Nashville, TN 37232 USA
[5] Vanderbilt Univ, Inst Imaging Sci, Nashville, TN 37232 USA
基金
美国国家卫生研究院;
关键词
amide proton transfer; chemical exchange saturation transfer; machine learning; tumor; EXCHANGE SATURATION-TRANSFER; IN-VIVO; TRANSFER CEST; TRANSFER MRI; HUMAN BRAIN; RESONANCE; ENHANCEMENT; RELAXATION; CONTRAST; ORIGINS;
D O I
10.1002/mrm.29970
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Purpose: Machine learning (ML) has been increasingly used to quantify CEST effect. ML models are typically trained using either measured data or fully simulated data. However, training with measured data often lacks sufficient training data, whereas training with fully simulated data may introduce bias because of limited simulations pools. This study introduces a new platform that combines simulated and measured components to generate partially synthetic CEST data, and to evaluate its feasibility for training ML models to predict amide proton transfer (APT) effect.Methods: Partially synthetic CEST signals were created using an inverse summation of APT effects from simulations and the other components from measurements. Training data were generated by varying APT simulation parameters and applying scaling factors to adjust the measured components, achieving a balance between simulation flexibility and fidelity. First, tissue-mimicking CEST signals along with ground truth information were created using multiple-pool model simulations to validate this method. Second, an ML model was trained individually on partially synthetic data, in vivo data, and fully simulated data, to predict APT effect in rat brains bearing 9 L tumors.Results: Experiments on tissue-mimicking data suggest that the ML method using the partially synthetic data is accurate in predicting APT. In vivo experiments suggest that our method provides more accurate and robust prediction than the training using in vivo data and fully synthetic data.Conclusion: Partially synthetic CEST data can address the challenges in conventional ML methods.
引用
收藏
页码:1908 / 1922
页数:15
相关论文
共 50 条
  • [31] Brain development in children with developmental delay using amide proton transfer-weighted imaging and magnetization transfer imaging
    Tang Xiaolu
    Zhang Hong
    Zhou Jinyuan
    Kang Huiying
    Yang Shuangfeng
    Cui Haijing
    Peng Yun
    儿科学研究(英文), 2020, 04 (04) : 250 - 256
  • [32] Improving CNV Detection Performance in Microarray Data Using a Machine Learning-Based Approach
    Goh, Chul Jun
    Kwon, Hyuk-Jung
    Kim, Yoonhee
    Jung, Seunghee
    Park, Jiwoo
    Lee, Isaac Kise
    Park, Bo-Ram
    Kim, Myeong-Ji
    Kim, Min-Jeong
    Lee, Min-Seob
    DIAGNOSTICS, 2024, 14 (01)
  • [33] Machine Learning-Based Precursor Detection Using Seismic Multi-Parameter Data
    Lu, Xian
    Wang, Qiong
    Zhang, Xiaodong
    Yan, Wei
    Meng, Lingyuan
    Wang, Haitao
    APPLIED SCIENCES-BASEL, 2024, 14 (06):
  • [34] MACHINE LEARNING-BASED APPROACH FOR TILLAGE IDENTIFICATION USING SENTINEL-1 DATA
    Pandit, Ankur
    Bansal, Pradhyumn
    Sawant, Suryakant
    Mohite, Jayantrao
    Srinivasu, P.
    IGARSS 2023 - 2023 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM, 2023, : 3406 - 3409
  • [35] Machine Learning-Based Stroke Patient Rehabilitation Stage Classification Using Kinect Data
    Tahsin, Tasfia
    Mumenin, Khondoker Mirazul
    Akter, Humayra
    Tiang, Jun Jiat
    Nahid, Abdullah-Al
    APPLIED SCIENCES-BASEL, 2024, 14 (15):
  • [36] Machine Learning Based Flashover Prediction Models Using Synthetic Data and Fire ImagesMachine Learning Based Flashover Prediction Models Using Synthetic Data and Fire Images
    Yansheng Song
    Guang Xiao
    Haoran Wang
    Fire Technology, 2025, 61 (4) : 2389 - 2413
  • [37] Detecting respiratory diseases using machine learning-based pattern recognition on spirometry data
    Taloba, Ahmed I.
    Matoog, R. T.
    ALEXANDRIA ENGINEERING JOURNAL, 2025, 113 : 44 - 59
  • [38] Data Imputation in Wireless Sensor Networks Using a Machine Learning-Based Virtual Sensor
    Matusowsky, Michael
    Ramotsoela, Daniel T.
    Abu-Mahfouz, Adnan M.
    JOURNAL OF SENSOR AND ACTUATOR NETWORKS, 2020, 9 (02)
  • [39] Machine Learning-Based Prediction of COVID-19 Severity and Progression to Critical Illness Using CT Imaging and Clinical Data
    Purkayastha, Subhanik
    Xiao, Yanhe
    Jiao, Zhicheng
    Thepumnoeysuk, Rujapa
    Halsey, Kasey
    Wu, Jing
    Thi My Linh Tran
    Ben Hsieh
    Choi, Ji Whae
    Wang, Dongcui
    Vallieres, Martin
    Wang, Robin
    Collins, Scott
    Feng, Xue
    Feldman, Michael
    Zhang, Paul J.
    Atalay, Michael
    Sebro, Ronnie
    Yang, Li
    Fan, Yong
    Liao, Wei-hua
    Bai, Harrison X.
    KOREAN JOURNAL OF RADIOLOGY, 2021, 22 (07) : 1213 - 1224
  • [40] Differentiation of hemangioblastoma from brain metastasis using MR amide proton transfer imaging
    Kamimura, Kiyohisa
    Nakajo, Masanori
    Gohara, Misaki
    Kawaji, Kodai
    Bohara, Manisha
    Fukukura, Yoshihiko
    Uchida, Hiroyuki
    Tabata, Kazuhiro
    Iwanaga, Takashi
    Akamine, Yuta
    Keupp, Jochen
    Fukami, Tomoaki
    Yoshiura, Takashi
    JOURNAL OF NEUROIMAGING, 2022, 32 (05) : 920 - 929