Arterial Input Function (AIF) Correction Using AIF Plus Tissue Inputs with a Bi-LSTM Network.

IF 2.2 4区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Tomography Pub Date : 2024-04-30 DOI:10.3390/tomography10050051
Qi Huang, Johnathan Le, Sarang Joshi, Jason Mendes, Ganesh Adluru, Edward DiBella
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Abstract

Background: The arterial input function (AIF) is vital for myocardial blood flow quantification in cardiac MRI to indicate the input time-concentration curve of a contrast agent. Inaccurate AIFs can significantly affect perfusion quantification. Purpose: When only saturated and biased AIFs are measured, this work investigates multiple ways of leveraging tissue curve information, including using AIF + tissue curves as inputs and optimizing the loss function for deep neural network training. Methods: Simulated data were generated using a 12-parameter AIF mathematical model for the AIF. Tissue curves were created from true AIFs combined with compartment-model parameters from a random distribution. Using Bloch simulations, a dictionary was constructed for a saturation-recovery 3D radial stack-of-stars sequence, accounting for deviations such as flip angle, T2* effects, and residual longitudinal magnetization after the saturation. A preliminary simulation study established the optimal tissue curve number using a bidirectional long short-term memory (Bi-LSTM) network with just AIF loss. Further optimization of the loss function involves comparing just AIF loss, AIF with compartment-model-based parameter loss, and AIF with compartment-model tissue loss. The optimized network was examined with both simulation and hybrid data, which included in vivo 3D stack-of-star datasets for testing. The AIF peak value accuracy and ktrans results were assessed. Results: Increasing the number of tissue curves can be beneficial when added tissue curves can provide extra information. Using just the AIF loss outperforms the other two proposed losses, including adding either a compartment-model-based tissue loss or a compartment-model parameter loss to the AIF loss. With the simulated data, the Bi-LSTM network reduced the AIF peak error from -23.6 ± 24.4% of the AIF using the dictionary method to 0.2 ± 7.2% (AIF input only) and 0.3 ± 2.5% (AIF + ten tissue curve inputs) of the network AIF. The corresponding ktrans error was reduced from -13.5 ± 8.8% to -0.6 ± 6.6% and 0.3 ± 2.1%. With the hybrid data (simulated data for training; in vivo data for testing), the AIF peak error was 15.0 ± 5.3% and the corresponding ktrans error was 20.7 ± 11.6% for the AIF using the dictionary method. The hybrid data revealed that using the AIF + tissue inputs reduced errors, with peak error (1.3 ± 11.1%) and ktrans error (-2.4 ± 6.7%). Conclusions: Integrating tissue curves with AIF curves into network inputs improves the precision of AI-driven AIF corrections. This result was seen both with simulated data and with applying the network trained only on simulated data to a limited in vivo test dataset.

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利用 Bi-LSTM 网络的 AIF 加组织输入校正动脉输入功能 (AIF)。
背景:动脉输入函数(AIF)对心脏磁共振成像中的心肌血流定量至关重要,它能显示造影剂的输入时间-浓度曲线。不准确的 AIF 会严重影响灌注量化。目的:当只能测量饱和和有偏差的 AIF 时,这项工作研究了利用组织曲线信息的多种方法,包括使用 AIF + 组织曲线作为输入和优化深度神经网络训练的损失函数。方法:使用 AIF 的 12 参数 AIF 数学模型生成模拟数据。组织曲线由真实的 AIF 和随机分布的区室模型参数组合而成。通过布洛赫模拟,为饱和-恢复三维径向叠加星序列构建了字典,其中考虑了翻转角、T2*效应和饱和后的残余纵向磁化等偏差。初步模拟研究使用双向长短期记忆(Bi-LSTM)网络确定了最佳组织曲线数,该网络仅有 AIF 损失。损失函数的进一步优化包括比较纯 AIF 损失、基于区室模型参数损失的 AIF 和基于区室模型组织损失的 AIF。模拟数据和混合数据对优化后的网络进行了检验,其中包括用于测试的活体三维星堆数据集。评估了 AIF 峰值准确性和 ktrans 结果。结果当增加的组织曲线能提供额外信息时,增加组织曲线的数量是有益的。仅使用 AIF 损失就优于其他两种建议的损失,包括在 AIF 损失的基础上添加基于区室模型的组织损失或区室模型参数损失。在模拟数据中,Bi-LSTM 网络将 AIF 峰值误差从字典法 AIF 的 -23.6 ± 24.4% 降低到网络 AIF 的 0.2 ± 7.2%(仅 AIF 输入)和 0.3 ± 2.5%(AIF + 十条组织曲线输入)。相应的 ktrans 误差从 -13.5 ± 8.8% 降至 -0.6 ± 6.6% 和 0.3 ± 2.1%。在混合数据(模拟数据用于训练;活体数据用于测试)中,使用字典方法的 AIF 的 AIF 峰值误差为 15.0 ± 5.3%,相应的 ktrans 误差为 20.7 ± 11.6%。混合数据显示,使用 AIF + 组织输入减少了误差,峰值误差(1.3 ± 11.1%)和 ktrans 误差(-2.4 ± 6.7%)。结论将组织曲线与 AIF 曲线整合到网络输入中可提高人工智能驱动的 AIF 校正精度。无论是使用模拟数据,还是将仅在模拟数据上训练的网络应用于有限的体内测试数据集,都能看到这一结果。
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来源期刊
Tomography
Tomography Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
2.70
自引率
10.50%
发文量
222
期刊介绍: TomographyTM publishes basic (technical and pre-clinical) and clinical scientific articles which involve the advancement of imaging technologies. Tomography encompasses studies that use single or multiple imaging modalities including for example CT, US, PET, SPECT, MR and hyperpolarization technologies, as well as optical modalities (i.e. bioluminescence, photoacoustic, endomicroscopy, fiber optic imaging and optical computed tomography) in basic sciences, engineering, preclinical and clinical medicine. Tomography also welcomes studies involving exploration and refinement of contrast mechanisms and image-derived metrics within and across modalities toward the development of novel imaging probes for image-based feedback and intervention. The use of imaging in biology and medicine provides unparalleled opportunities to noninvasively interrogate tissues to obtain real-time dynamic and quantitative information required for diagnosis and response to interventions and to follow evolving pathological conditions. As multi-modal studies and the complexities of imaging technologies themselves are ever increasing to provide advanced information to scientists and clinicians. Tomography provides a unique publication venue allowing investigators the opportunity to more precisely communicate integrated findings related to the diverse and heterogeneous features associated with underlying anatomical, physiological, functional, metabolic and molecular genetic activities of normal and diseased tissue. Thus Tomography publishes peer-reviewed articles which involve the broad use of imaging of any tissue and disease type including both preclinical and clinical investigations. In addition, hardware/software along with chemical and molecular probe advances are welcome as they are deemed to significantly contribute towards the long-term goal of improving the overall impact of imaging on scientific and clinical discovery.
期刊最新文献
A Comparison of the Sensitivity and Cellular Detection Capabilities of Magnetic Particle Imaging and Bioluminescence Imaging. Tumor Morphology for Prediction of Poor Responses Early in Neoadjuvant Chemotherapy for Breast Cancer: A Multicenter Retrospective Study. Evolving and Novel Applications of Artificial Intelligence in Abdominal Imaging. Conference Report: Review of Clinical Implementation of Advanced Quantitative Imaging Techniques for Personalized Radiotherapy. Head and Neck Squamous Cell Carcinoma: Insights from Dual-Energy Computed Tomography (DECT).
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