An Investigation into the Relationship between Semantic and Content Based Similarity Using LIDC

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An Investigation into the Relationship between Semantic and Content Based Similarity Using LIDC. Grace Dasovich Robert Kim Midterm Presentation August 21 2009. Outline. Outline. Related Work Data Modeling Approach and Results Similarity Measures Artificial Neural Network - PowerPoint PPT Presentation

Transcript of An Investigation into the Relationship between Semantic and Content Based Similarity Using LIDC

An Investigation into the Relationship between Semantic and Content Based Similarity

Using LIDC

Grace Dasovich

Robert Kim

Midterm Presentation

August 21 2009

OutlineOutline

• Related Work

• Data

• Modeling Approach and Results– Similarity Measures– Artificial Neural Network– Multivariate Linear Regression

• Conclusions

• Future Work

• Computer-Aided Diagnosis (CADx) based on low-level image features– Armato et al. developed a linear discriminant

classifier using features of lung nodules– Need to find the relationship between the

image features and radiologists’ ratings

Related Work

• Image features and the semantic ratings– Lung Interpretations

• Barb et al. developed Evolutionary System for Semantic Exchange of Information in Collaborative Environments (ESSENCE)

• Raicu et al. used ensemble classifiers and decision trees to predict semantic ratings

• Samala et al. used several combinations of image features and the radiologists’ ratings to classify nodules

Related Work

– Similarity• Li et al. investigated four different methods to

compute similarity measures for lung nodules– Feature-based– Pixel-value-difference– Cross correlation– ANN

Related Work

Materials

• LIDC Dataset

• 149 Unique Nodules– One slice per nodule, largest nodule area

• 9 Semantic Characteristics– Calcification and Internal Structure had little

variation, thus were not used

• 64 Content Features– Shape, size, intensity, and texture

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Data

• Related Work

• Data

• Modeling Approach and Results– Similarity Measures– Artificial Neural Network– Multivariate Linear Regression

• Conclusions

• Future Work

Outline

• Cosine Similarity

• Jeffrey Divergence

• Euclidean Distance

Similarity Measures

Similarity Measures

0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1-0.1

0

0.1

0.2

0.3

0.4

0.5

0.6

Euclidean Distance

Co

sin

e S

imila

rity

0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 10

0.5

1

1.5

2

2.5

3

3.5

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Euclidean Distance

Jeff

rey

Div

erg

en

ce

Similarity Measures

• Computed feature distance measures

Similarity Measures

OutlineOutline

• Related Work

• Data

• Modeling Approach and Results– Similarity Measures– Artificial Neural Network– Multivariate Linear Regression

• Conclusions

• Future Work

• Two three-layer ANNs – Input (64 neurons), hidden layer (5 neurons), output

(1)– Input (64 neurons), hidden layer (5 neurons), output

(7)

• Input = 64 feature distances• Output = Semantic similarity or difference in

semantic ratings• Hyperbolic tangent function, backpropagation

algorithm, 200 iterations

Methods

• ANN with a single output– 640 random pairs from all 109 nodules– 231 pairs from nodules with malignancy > 3– 496 pairs from nodules with area > 122 mm2

Methods

Methods

• ANN with seven outputs– 640 random pairs from all 109 nodules

• Leave-one-out method– Cosine similarity or Jeffrey divergence or

difference in Semantic ratings used as teaching data

– An ANN trained with entire dataset minus one image pair

– The pair left out used for testing– Correlation between calculated radiologists’

similarity and ANN output calculated

Methods

• ANN with a single output– 640 random pairs from all 109 nodules– 231 pairs from nodules with malignancy > 3– 496 pairs from nodules with area > 122 mm2

• ANN with seven outputs– 640 random pairs from all 109 nodules

Methods

• ANN using 640 random pairs

Results

• ANN using 231 pairs with malignancy rating > 3

Results

• ANN using 496 pairs with area > 122 mm2

Results

• ANN output vs. target values using Jeffrey divergence for the 640 pairs (r = 0.438)

Results

0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.80

0.1

0.2

0.3

0.4

0.5

0.6

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0.8

0.9

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Output

Ta

rge

t

• ANN using random 640 pairs and the Jeffrey divergence with seven semantic ratings

Results

OutlineOutline

• Related Work

• Data

• Modeling Approach and Results– Similarity Measures– Artificial Neural Network– Multivariate Linear Regression

• Conclusions

• Future Work

Methods

• Normalization of Features– Min-Max Technique – Z-Score Technique

• Pair Selection– Looked for matches between k number of

most similar images based on semantic and content

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Methods

Methods

• Multivariate Regression Analysis– Select features with highest correlation

coefficients

– Feature distance measures

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Methods

• Nodule Analysis– Determine differences between selected and

non-selected nodules– Define requirements for our model

Methods

Results

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Results

0 2 4 6 8 10 12 14 16 18 200

0.5

1

Cor

rela

tion

Threshold0 2 4 6 8 10 12 14 16 18 20

0

1000

2000

Num

ber

of P

airs

Results

d(i, j) d2(i, j) exp(d(i, j))

Cosine 0.871 0.849 0.866

Jeffrey 0.647 0.633 0.608

Results

Correlation Coefficient Feature0.1175 Equivalent Diameter0.1085 Energy (Haralick)0.0823 Gabor Mean 135_050.0647 Convex Area0.0467 Gabor STD 135_040.0322 Min Intensity BG0.0295 Markov 40.0280 Variance (Haralick)0.0265 Gabor STD 45_050.0238 SD Intensity

R2 = 0.871

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Results

Results

0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1-0.1

0

0.1

0.2

0.3

0.4

0.5

0.6

Content

Sem

antic

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Results

Results

1 2 3 4 50

0.5

1Lobulation

1 2 3 4 50

0.5

1Malignancy

1 2 3 4 50

0.2

0.4

0.6

0.8

1Margin

1 2 3 4 50

0.2

0.4

0.6

0.8

1Sphericity

1 2 3 4 50

0.5

1Spiculation

1 2 3 4 50

0.5

1Subtlety

1 2 3 4 50

0.5

1Texture

79 Nodules

70 Nodules

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Results

Results

-2 0 2 4 6 80

0.2

0.4Equivalent Diameter

-2 0 2 4 60

0.2

0.4Energy

-1 0 1 2 3 40

0.2

0.4Gabor Mean 135 5

-2 0 2 4 6 8 100

0.5

1Convex Area

-2 -1 0 1 2 3 4 50

0.1

0.2Gabor SD 135 4

-3 -2 -1 0 1 20

0.2

0.4Min Intensity BG

-1 0 1 2 3 4 5 60

0.5

1Markov4

-2 0 2 4 6 80

0.5

1Variance

-2 -1 0 1 2 3 40

0.1

0.2Gabor SD 45 5

-2 0 2 4 60

0.1

0.2SD Intensity

79 nodules70 nodules

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Results

Results

-5 0 5 100

0.1

0.2

0.3

0.4A

-5 0 5 100

0.05

0.1

0.15

0.2B

79 Nodules70 Nodules

79 Nodules70 Nodules

1 2 3 4 50

0.2

0.4

0.6

0.8C

1 2 3 4 50

0.2

0.4

0.6

0.8D

79 Nodules70 Nodules

79 Nodules70 Nodules

Results

A. Equivalent Diameter, B. Standard Deviation of Intensity, C. Malignancy, D. Subtlety

Preliminary Issues

• The ANN also is not yet sufficient to predict semantic similarity from content– Best correlation 0.438– Malignancy correlation 0.521– Jeffrey performed better unlike linear model

• A semantic gap still exists

Conclusions

Conclusions

• Our linear model applies to a specific type of nodule– Characteristics: High malignancy, high texture,

low lobulation, and low spiculation– Features: Larger diameter, greater intensity

• Linear models are not sufficient for determination of similarities– R2 of 0.871 with chosen nodules

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Conclusions

Future Work

• Reduce variability among radiologists– Use only nodules with radiologists’ agreement

• Find best combination of content features– 64 may be too many– Currently only using 2D

Future Work

• Different semantic distance measures– Some ratings are ordinal, Jeffery is for

categorical

• Different methods of machine learning– Incorporate radiologists’ feedback into training– Ensemble of classifiers

Future Work

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