Tracking Therapy Response in Glioblastoma Using 1D Convolutional Neural Networks

被引:0
|
作者
Ortega-Martorell, Sandra [1 ]
Olier, Ivan [1 ]
Hernandez, Orlando [2 ]
Restrepo-Galvis, Paula D. [2 ]
Bellfield, Ryan A. A. [1 ]
Candiota, Ana Paula [3 ,4 ]
机构
[1] Liverpool John Moores Univ, Data Sci Res Ctr, Liverpool L3 3AF, England
[2] Escuela Colombiana Ingn Julio Garavito, Bogota 111166, Colombia
[3] Ctr Invest Biomed Red Bioingn Biomat & Nanomed, Cerdanyola Del Valles 08193, Spain
[4] Univ Autonoma Barcelona, Dept Bioquim & Biol Mol, Fac Biociencies, Cerdanyola Del Valles 08193, Spain
关键词
therapy response; glioblastoma; temozolomide; preclinical models; magnetic resonance spectroscopy; class activation mapping; Grad-CAM; convolutional neural networks; deep learning; MAGNETIC-RESONANCE-SPECTROSCOPY; BRAIN-TUMORS; RADIATION-THERAPY; MOUSE GLIOMA; CLASSIFICATION; TEMOZOLOMIDE; PATTERN; MRS; PERTURBATION; DIAGNOSIS;
D O I
10.3390/cancers15154002
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Simple Summary Glioblastoma (GB) is a malignant brain tumour with no cure, even after the best treatment. The evaluation of a therapy response is usually based on magnetic resonance imaging (MRI), but it lacks precision in early stages, and doctors must wait several weeks until they are confident information is produced, facing an uncertain time window. Magnetic resonance spectroscopy (MRS/MRSI) can provide additional information about tumours and their environment but is not widely used in clinical settings since the spectroscopy format is not standardised as MRI is, and doctors are not familiarised with outputs/interpretation. This study aims to improve the assessment of the treatment response in GB using MRSI data and machine learning, including state-of-the-art one-dimensional convolutional neural networks. Preclinical (murine) GB data were used for developing models that successfully identified tumour regions regarding their response to treatment (or the lack thereof). These models were accurate and outperformed previous methods, potentially providing new opportunities for GB patient management. Background: Glioblastoma (GB) is a malignant brain tumour that is challenging to treat, often relapsing even after aggressive therapy. Evaluating therapy response relies on magnetic resonance imaging (MRI) following the Response Assessment in Neuro-Oncology (RANO) criteria. However, early assessment is hindered by phenomena such as pseudoprogression and pseudoresponse. Magnetic resonance spectroscopy (MRS/MRSI) provides metabolomics information but is underutilised due to a lack of familiarity and standardisation. Methods: This study explores the potential of spectroscopic imaging (MRSI) in combination with several machine learning approaches, including one-dimensional convolutional neural networks (1D-CNNs), to improve therapy response assessment. Preclinical GB (GL261-bearing mice) were studied for method optimisation and validation. Results: The proposed 1D-CNN models successfully identify different regions of tumours sampled by MRSI, i.e., normal brain (N), control/unresponsive tumour (T), and tumour responding to treatment (R). Class activation maps using Grad-CAM enabled the study of the key areas relevant to the models, providing model explainability. The generated colour-coded maps showing the N, T and R regions were highly accurate (according to Dice scores) when compared against ground truth and outperformed our previous method. Conclusions: The proposed methodology may provide new and better opportunities for therapy response assessment, potentially providing earlier hints of tumour relapsing stages.
引用
收藏
页数:20
相关论文
共 50 条
  • [21] Hotspot Prediction Using 1D Convolutional Neural Network
    Syarifudin, Mohammad Anang
    Novitasari, Dian Candra Rini
    Marpaung, Faridawaty
    Wahyudi, Noor
    Hapsari, Dian Puspita
    Supriyati, Endang
    Farida, Yuniar
    Amin, Faris Muslihul
    Nugraheni, R. R. Diah
    Ilham
    Nariswari, Rinda
    Setiawan, Fajar
    5TH INTERNATIONAL CONFERENCE ON COMPUTER SCIENCE AND COMPUTATIONAL INTELLIGENCE 2020, 2021, 179 : 845 - 853
  • [22] Anomaly Detection using 1D Convolutional Neural Networks for Surface Enhanced Raman Scattering
    Mozaffari, M. Hamed
    Tay, Li-Lin
    SPIE FUTURE SENSING TECHNOLOGIES (2020), 2020, 11525
  • [23] Human Tracking Using Convolutional Neural Networks
    Fan, Jialue
    Xu, Wei
    Wu, Ying
    Gong, Yihong
    IEEE TRANSACTIONS ON NEURAL NETWORKS, 2010, 21 (10): : 1610 - 1623
  • [24] Zebrafish tracking using convolutional neural networks
    Xu, Zhiping
    Cheng, Xi En
    SCIENTIFIC REPORTS, 2017, 7
  • [25] Zebrafish tracking using convolutional neural networks
    Zhiping XU
    Xi En Cheng
    Scientific Reports, 7
  • [26] A Mesopic Lighting Evaluation Model Based on 1D Convolutional Neural Networks
    Li, Hung-Chung
    Sun, Pei-Li
    Huang, Yennun
    2020 IEEE INTERNATIONAL CONFERENCE ON CONSUMER ELECTRONICS - TAIWAN (ICCE-TAIWAN), 2020,
  • [27] A comparative Analysis of 1D Convolutional Neural Networks for Bearing Fault Diagnosis
    Bapir, Aydil
    Aydin, Ilhan
    2022 INTERNATIONAL CONFERENCE ON DECISION AID SCIENCES AND APPLICATIONS (DASA), 2022, : 1406 - 1411
  • [28] Joint Sample Expansion and 1D Convolutional Neural Networks for Tumor Classification
    Liu, Jian
    Cheng, Yuhu
    Wang, Xuesong
    Kong, Yi
    INTELLIGENT COMPUTING THEORIES AND APPLICATION, ICIC 2017, PT II, 2017, 10362 : 135 - 141
  • [29] Footnote-based Document Image Classification using 1D Convolutional Neural Networks and Histograms
    Mhiri, Mohamed
    Abuelwafa, Sherif
    Desrosiers, Christian
    Cheriet, Mohamed
    PROCEEDINGS OF THE 2017 SEVENTH INTERNATIONAL CONFERENCE ON IMAGE PROCESSING THEORY, TOOLS AND APPLICATIONS (IPTA 2017), 2017,
  • [30] Lipschitz-bounded 1D convolutional neural networks using the Cayley transform and the controllability Gramian
    Pauli, Patricia
    Wang, Ruigang
    Manchester, Ian R.
    Allgower, Frank
    2023 62ND IEEE CONFERENCE ON DECISION AND CONTROL, CDC, 2023, : 5345 - 5350