Similarity measurement of lung nodules is a critical component in content-based image retrieval (CBIR), which can be useful in differentiating between benign and malignant lung nodules on computer tomography (CT). This paper proposes a new two-step CBIR scheme (TSCBIR) for computer-aided diagnosis of lung nodules. Two similarity metrics, semantic relevance and visual similarity, are introduced to measure the similarity of different nodules. The first step is to search for K most similar reference ROIs for each queried ROI with the semantic relevance metric. The second step is to weight each retrieved ROI based on its visual similarity to the queried ROI. The probability is computed to predict the likelihood of the queried ROI depicting a malignant lesion. In order to verify the feasibility of the proposed algorithm, a lung nodule dataset including 366 nodule regions of interest (ROIs) is assembled from LIDC-IDRI lung images on CT scans. Three groups of texture features are implemented to represent a nodule ROI. Our experimental results on the assembled lung nodule dataset show good performance improvement over existing popular classifiers.
Cold–hot nature theory is the core basic theory
of traditional
Chinese medicine (TCM). “Treating the hot syndrome with cold
nature medicine and treating cold syndrome with hot nature medicine”
indicates that correct classification of medical properties (cold
or hot nature) of Chinese herbal medicines (CHMs) is an important
basis for TCM treatment. In this study, we propose a novel multisolvent
similarity measure retrieval scheme (MSSMRS) for discriminating CHMs
as cold or hot. We explore a multisolvent distance metric learning
algorithm to calculate similarity measure of CHM ingredients, and
a retrieval scheme for nature identification. First, four solvents
(chloroform, distilled water, absolute ethanol, and petroleum ether)
are applied to extract ultraviolet (UV) spectrum data of CHM ingredients.
Second, we study quantifying the similarity of CHM ingredients to
fingerprint similarity. We explore a multisolvent distance metric
learning (MSDML) algorithm to measure the similarity of CHM ingredients.
MSDML can discover complementary characteristics of different solvent
data sets through an optimization algorithm. Finally, a retrieval
scheme is designed to analyze the relationship between the CHM ingredients
and cold–hot nature. Extensive experimental results demonstrate
that CHMs with similar compositions of substances have similar medicinal
natures. Experimental evaluations based on the proposed retrieval
scheme suggest the effectiveness of MSDML in the identification of
the nature of CHMs.
The study results demonstrated the proposed algorithm outperforms the compared algorithms, when taking the semantic relevant and visual similarity into account in kernel space. The algorithm can be used in a CBMIR system for a query mass to retrieve similarity masses, which can help doctors make better decisions.
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