Wheeless L L, Robinson R D, Lapets O P, Cox C, Rubio A, Weintraub M, Benjamin L J
Department of Pathology and Laboratory Medicine, University of Rochester Medical Center, New York.
Cytometry. 1994 Oct 1;17(2):159-66. doi: 10.1002/cyto.990170208.
Sickle cell anemia is a disease for which there is currently no effective treatment. One method of evaluating clinical status is the counting of cell types based on morphology. There is a need for a rapid, reproducible method, superior to human inspection, for classification of these cells. Quantitative digital-image analysis is being applied to this need. Blood from 24 patients with sickle cell anemia (SS) and SC disease and ten hematologically normal volunteers (AA) was stressed by bubbling with nitrogen. One hundred fifty cells were analyzed from each sickle specimen, and 100 were analyzed from each nonsickle specimen. Expert observers classified each cell as normal (N), sickle (S), or other abnormal (A). Cells were analyzed with a custom, high-resolution image-analysis instrument. A total of 42 features including metric, optical density-derived, and textural features were extracted. The metric feature Form Factor (4 pi Area/Perimeter2) was selected by recursive partitioning analysis as the sole feature needed for segregating cells into the classes of N, A, and S. The agreement of automated classification (using cutpoints determined by recursive partitioning analysis) with a human expert for specimens from individuals with sickle cell anemia was 89% for N-, 73% for A-, and 92% for S-classified cells. For specimens from AA individuals, the agreement was 92% for N and 76% for A. For specimens from individuals with sickle cell anemia, rates of agreement between two human experts were compared and found to be 86% for N, 84% for A, and 80% for S. For specimens from AA individuals, the agreement was 90% for N and 87% for A.
镰状细胞贫血是一种目前尚无有效治疗方法的疾病。评估临床状态的一种方法是根据形态对细胞类型进行计数。需要一种快速、可重复且优于人工检查的方法来对这些细胞进行分类。定量数字图像分析正被应用于这一需求。对24例镰状细胞贫血(SS)和SC疾病患者以及10名血液学正常志愿者(AA)的血液进行氮气鼓泡处理。从每个镰状样本中分析150个细胞,从每个非镰状样本中分析100个细胞。专家观察者将每个细胞分类为正常(N)、镰状(S)或其他异常(A)。使用定制的高分辨率图像分析仪器对细胞进行分析。共提取了42个特征,包括度量特征、光密度衍生特征和纹理特征。通过递归划分分析选择度量特征形状因子(4π面积/周长²)作为将细胞分为N、A和S类所需的唯一特征。对于镰状细胞贫血患者样本,自动分类(使用递归划分分析确定的切点)与人类专家的一致性为:N类细胞89%,A类细胞73%,S类细胞92%。对于AA个体的样本,N类细胞的一致性为92%,A类细胞为76%。对于镰状细胞贫血患者的样本,比较了两位人类专家之间的一致性,发现N类细胞为86%,A类细胞为84%,S类细胞为80%。对于AA个体的样本,N类细胞的一致性为90%,A类细胞为87%。