Sharkey Michael J, Checkley Elliot W, Swift Andrew J
Department of Clinical Medicine, University of Sheffield.
3D Imaging Lab, Sheffield Teaching Hospitals NHS Foundation Trust.
Curr Opin Pulm Med. 2024 Sep 1;30(5):464-472. doi: 10.1097/MCP.0000000000001103. Epub 2024 Jul 9.
Pulmonary hypertension is a heterogeneous condition with significant morbidity and mortality. Computer tomography (CT) plays a central role in determining the phenotype of pulmonary hypertension, informing treatment strategies. Many artificial intelligence tools have been developed in this modality for the assessment of pulmonary hypertension. This article reviews the latest CT artificial intelligence applications in pulmonary hypertension and related diseases.
Multistructure segmentation tools have been developed in both pulmonary hypertension and nonpulmonary hypertension cohorts using state-of-the-art UNet architecture. These segmentations correspond well with those of trained radiologists, giving clinically valuable metrics in significantly less time. Artificial intelligence lung parenchymal assessment accurately identifies and quantifies lung disease patterns by integrating multiple radiomic techniques such as texture analysis and classification. This gives valuable information on disease burden and prognosis. There are many accurate artificial intelligence tools to detect acute pulmonary embolism. Detection of chronic pulmonary embolism proves more challenging with further research required.
There are numerous artificial intelligence tools being developed to identify and quantify many clinically relevant parameters in both pulmonary hypertension and related disease cohorts. These potentially provide accurate and efficient clinical information, impacting clinical decision-making.
肺动脉高压是一种具有显著发病率和死亡率的异质性疾病。计算机断层扫描(CT)在确定肺动脉高压的表型以及为治疗策略提供信息方面发挥着核心作用。在这种模式下,已经开发了许多人工智能工具用于评估肺动脉高压。本文综述了CT人工智能在肺动脉高压及相关疾病中的最新应用。
使用最先进的U-Net架构,在肺动脉高压和非肺动脉高压队列中都开发了多结构分割工具。这些分割结果与训练有素的放射科医生的分割结果非常吻合,能在显著更短的时间内给出具有临床价值的指标。人工智能肺实质评估通过整合多种放射组学技术,如纹理分析和分类,准确识别和量化肺部疾病模式。这提供了有关疾病负担和预后的有价值信息。有许多准确的人工智能工具可用于检测急性肺栓塞。慢性肺栓塞的检测更具挑战性,需要进一步研究。
正在开发众多人工智能工具,以识别和量化肺动脉高压及相关疾病队列中的许多临床相关参数。这些工具可能提供准确而高效的临床信息,影响临床决策。