Prediction of Recurrence in Thyroid Cancer Patients Using Plotkin’s Least General Generalisation LGG as a Method of Inductive Logic Programming ILP
Thyroid World Congress ePoster Library. Kim S. 06/21/19; 272134; 98
Prof. Dr. Seok-Mo Kim
Prof. Dr. Seok-Mo Kim
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Abstract
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Background:

Although thyroid cancers are known to have a relative low risk of recurrence, there are factors associated with a higher risk of recurrence. However, predicting disease recurrence and prognosis in patients undergoing thyroidectomy is clinically difficult. To detect new algorithms to predict recurrence, inductive logic programming was used.



Methods:

From January 2009 to June 2010, 797 cases of thyroid cancer patients who underwent bilateral total thyroidectomy with following radio-iodine treatment from our database were studied. 638 (80%) cases were used to create algorithms to detect recurrence. 159 (20%) cases were analyzed for validation of created rules. Least Generalized Generalization LGG was chosen as a method of inductive logic programming to extract rules which represents algorithms to predict recurrence. Delmia PRD was used for analysis.

 

Results:

Of the 638 cases, there were 46 (7.2%) cases with recurrence. There were 4 rules detected which could predict all of the cases with recurrence. Postoperative thyroglobulin was the most powerful variable which correlated with recurrence. When the 4 recognized rules were applied to 159 cases for validation, it was possible to predict 72.7% (8 cases among 11 of the recurrences). When factors known for high and intermediate risk were selected for creating rules, the most optimal combination could only predict 66.7% of the recurrence cases.

 

Discussion & Conclusion:

From our database, rules to predict recurrence were identified which were able to predict recurrence more precise than already known high and intermediate risk factors.

 


Background:

Although thyroid cancers are known to have a relative low risk of recurrence, there are factors associated with a higher risk of recurrence. However, predicting disease recurrence and prognosis in patients undergoing thyroidectomy is clinically difficult. To detect new algorithms to predict recurrence, inductive logic programming was used.



Methods:

From January 2009 to June 2010, 797 cases of thyroid cancer patients who underwent bilateral total thyroidectomy with following radio-iodine treatment from our database were studied. 638 (80%) cases were used to create algorithms to detect recurrence. 159 (20%) cases were analyzed for validation of created rules. Least Generalized Generalization LGG was chosen as a method of inductive logic programming to extract rules which represents algorithms to predict recurrence. Delmia PRD was used for analysis.

 

Results:

Of the 638 cases, there were 46 (7.2%) cases with recurrence. There were 4 rules detected which could predict all of the cases with recurrence. Postoperative thyroglobulin was the most powerful variable which correlated with recurrence. When the 4 recognized rules were applied to 159 cases for validation, it was possible to predict 72.7% (8 cases among 11 of the recurrences). When factors known for high and intermediate risk were selected for creating rules, the most optimal combination could only predict 66.7% of the recurrence cases.

 

Discussion & Conclusion:

From our database, rules to predict recurrence were identified which were able to predict recurrence more precise than already known high and intermediate risk factors.

 


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