Early detection of many life-threatening diseases (e.g., prostate and breast cancer) within at-risk population can improve clinical outcomes and reduce cost of care. While numerous disease-specific "screening" tests that are closer to Point-of-Care (POC) are in use for this task, their low specificity results in unnecessary biopsies, leading to avoidable patient trauma and wasteful healthcare spending. On the other hand, despite the high accuracy of Magnetic Resonance (MR) imaging in disease diagnosis, it is not used as a POC disease identification tool because of poor accessibility. The root cause of poor accessibility of MR stems from the requirement to reconstruct high-fidelity images, as it necessitates a lengthy and complex process of acquiring large quantities of high-quality k-space measurements. In this study we explore the feasibility of an ML-augmented MR pipeline that directly infers the disease sidestepping the image reconstruction process. We hypothesise that the disease classification task can be solved using a very small tailored subset of k-space data, compared to image reconstruction. Towards that end, we propose a method that performs two tasks: 1) identifies a subset of the k-space that maximizes disease identification accuracy, and 2) infers the disease directly using the identified k-space subset, bypassing the image reconstruction step. We validate our hypothesis by measuring the performance of the proposed system across multiple diseases and anatomies. We show that comparable performance to image-based classifiers, trained on images reconstructed with full k-space data, can be achieved using small quantities of data: 8% of the data for detecting multiple abnormalities in prostate and brain scans, and 5% of the data for knee abnormalities. To better understand the proposed approach and instigate future research, we provide an extensive analysis and release code.
翻译:在危险人群中早期发现许多危及生命的疾病(如前列腺癌和乳腺癌),可以改善临床结果,降低护理费用。尽管许多与疾病有关的“筛选”测试在这项工作中使用了接近于卡雷(POC)点的多种特定疾病测试,但其特性低导致不必要的生物监测,导致可以避免的病人创伤和浪费的医疗保健支出。另一方面,尽管在疾病诊断中磁共振(MAR)成像(MR)成像的精确度很高,但是它并没有被用作POC疾病识别工具,因为难以获取的POC疾病识别工具。由于需要重建高纤维图像,因此MR(MR)的获取能力较差的根源在于需要重建高纤维图像,因为它需要获得大量高质量的K-空间测量的长而复杂的过程。在这项研究中,我们探索了ML-AGAGNM输油管的可行性,直接推导出疾病在图像重建过程中出现偏差。我们推测的疾病分类任务可以使用微小量的K-空间数据组合,而与图像的重建相比,我们推测,可以解决这种疾病分类工作。为此,我们建议了一种方法,我们用一个可比较的直观的直观的直径的图像重建,我们所使用的方法,我们用来测量的K-直路路段数据,我们用一个测量数据来测量数据,我们所测测的精确的计算。