Detection of small changes in medical and random-dot images comparing self-organizing map performance to human detection
John Wandeto, Henry Nyongesa, Yves Remond, Birgitta Dresp-Langley

TL;DR
This study introduces a method using Self Organizing Maps to detect very small changes in medical and random-dot images, outperforming human novices in identifying subtle differences.
Contribution
The paper presents a novel application of quantization errors from Self Organizing Maps for detecting minute image changes without relying on segmentation.
Findings
Quantization errors increase with added lesions in MRI images.
The method detects small local differences undetectable by humans.
Results are consistent with previous alternative approaches.
Abstract
Radiologists use time series of medical images to monitor the progression of a patient condition. They compare information gleaned from sequences of images to gain insight on progression or remission of the lesions, thus evaluating the progress of a patient condition or response to therapy. Visual methods of determining differences between one series of images to another can be subjective or fail to detect very small differences. We propose the use of quantization errors obtained from Self Organizing Maps for image content analysis. We tested this technique with MRI images to which we progressively added synthetic lesions. We have used a global approach that considers changes on the entire image as opposed to changes in segmented lesion regions only. We claim that this approach does not suffer from the limitations imposed by segmentation, which may compromise the results. Results show…
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Taxonomy
TopicsAI in cancer detection · Image Retrieval and Classification Techniques · Cell Image Analysis Techniques
MethodsSelf-Organizing Map
