Chandy Edward, Szmul Adam, Stavropoulou Alkisti, Jacob Joseph, Veiga Catarina, Landau David, Wilson James, Gulliford Sarah, Fenwick John D, Hawkins Maria A, Hiley Crispin, McClelland Jamie R
Centre for Medical Image Computing, Department of Medical Physics and Biomedical Engineering, University College London, London WC1E 6BT, UK.
UCL Cancer Institute, University College London, London WC1E 6BT, UK.
Cancers (Basel). 2022 Feb 14;14(4):946. doi: 10.3390/cancers14040946.
We present a novel classification system of the parenchymal features of radiation-induced lung damage (RILD). We developed a deep learning network to automate the delineation of five classes of parenchymal textures. We quantify the volumetric change in classes after radiotherapy in order to allow detailed, quantitative descriptions of the evolution of lung parenchyma up to 24 months after RT, and correlate these with radiotherapy dose and respiratory outcomes. Diagnostic CTs were available pre-RT, and at 3, 6, 12 and 24 months post-RT, for 46 subjects enrolled in a clinical trial of chemoradiotherapy for non-small cell lung cancer. All 230 CT scans were segmented using our network. The five parenchymal classes showed distinct temporal patterns. Moderate correlation was seen between change in tissue class volume and clinical and dosimetric parameters, e.g., the Pearson correlation coefficient was ≤0.49 between V30 and change in Class 2, and was 0.39 between change in Class 1 and decline in FVC. The effect of the local dose on tissue class revealed a strong dose-dependent relationship. Respiratory function measured by spirometry and MRC dyspnoea scores after radiotherapy correlated with the measured radiological RILD. We demonstrate the potential of using our approach to analyse and understand the morphological and functional evolution of RILD in greater detail than previously possible.
我们提出了一种新型的放射性肺损伤(RILD)实质特征分类系统。我们开发了一个深度学习网络,以自动描绘五类实质纹理。我们对放疗后各分类中的体积变化进行量化,以便对放疗后长达24个月的肺实质演变进行详细、定量的描述,并将这些变化与放疗剂量和呼吸结果相关联。对于46名参加非小细胞肺癌放化疗临床试验的受试者,在放疗前以及放疗后3、6、12和24个月均有诊断性CT图像。使用我们的网络对所有230次CT扫描进行了分割。五个实质分类呈现出不同的时间模式。组织分类体积变化与临床和剂量学参数之间存在中等程度的相关性,例如,V30与分类2的变化之间的皮尔逊相关系数≤0.49,分类1的变化与用力肺活量(FVC)下降之间的相关系数为0.39。局部剂量对组织分类的影响显示出强烈的剂量依赖性关系。放疗后通过肺活量测定法测量的呼吸功能和医学研究委员会(MRC)呼吸困难评分与测量的放射性RILD相关。我们证明了使用我们的方法比以往更详细地分析和理解RILD的形态和功能演变的潜力。