Title of article :
Visualisation of biomedical datasets by use of growing cell structure networks: a novel diagnostic classification technique Original Research Article
Author/Authors :
Andrew J Walker، نويسنده , , Simon S Cross، نويسنده , , Robert F Harrison، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 1999
Pages :
4
From page :
1518
To page :
1521
Abstract :
Background Medical research produces large multivariable datasets that are difficult to visualise and interpret intuitively. We describe a novel growing cell structure (GCS) technique that compresses multidimensional datasets into twodimensional maps with colour overlays that can be visually interpreted. Methods The two-dimensional map is self-discovered from the training set by distribution of cases to different nodes according to similarity between the cases at each node. Nodes are added to the map until there is no further significant reduction in error. The Parzen window method is used to estimate the probability distribution of the training cases, and this probability is converted to posterior class probabilities by use of Bayesʹ theorem. Classification performance can be assessed by means of receiver operating characteristic (ROC) curves. Colour maps of the values of each input variable at each node are constructed, which illustrate the relation between each input variable and the overall distribution of cases in the network map. Findings From a dataset of 11 input variables from 692 fineneedle aspirate samples from breast lesions, a 32-node network produced an area under the ROC curve of 0·96, which was not significantly different from that for logistic regression (0·98, z=1·09, p>0·05). Colour maps of the input variables showed that some variables had discrete distributions over exclusively benign or malignant areas of the network, and were thus discriminant, whereas others, such as foamy macrophages, covered both benign and malignant regions. Interpretation This technique produces dimensional compression that allows multidimensional data to be displayed as two-dimensional colour images. This envisioning of information allows the highly developed visuospatial abilities of human observers to perceive subtle inter-relations in the dataset.
Journal title :
The Lancet
Serial Year :
1999
Journal title :
The Lancet
Record number :
550011
Link To Document :
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