Association Rule Mining-Based Radiomics in Breast Cancer Diagnosis

Publish Year: 1403
نوع سند: مقاله ژورنالی
زبان: English
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JR_IJMP-21-2_006

تاریخ نمایه سازی: 6 خرداد 1403

Abstract:

Introduction: Breast cancer is the most common cancer among women worldwide. Early detection of breast cancer reduces mortality and morbidity. Acquiring or identifying valuable information in the form of rules is the key to an accurate diagnosis and differentiation between benign and malignant breast cancers. Our goal is to find the hidden but beneficial knowledge in the form of rules from datasets. In this paper, we use association rule mining algorithms to obtain information in the form of data rules for differential diagnosis between benign and malignant breast masses based on radiomic features, extracted from mammography images. Material and Methods: In this study, ۷۰۳ patients with both benign and malignant tumors were selected from the Curated Breast Imaging Subset of the Digital Database for Screening Mammography (CBIS-DDSM) database. The embedded method was employed to select the radiomic features of the image and uncover the hidden patterns of data through the Apriori algorithm. Results: The association rules were generated from separated rules for benign and malignancy classes. The important features of the benign class include mass margins, horizontal long-run emphasis, ۱۳۵drfraction, WavEnHLs۳, vertical short-run emphasis, Teta۱, ۴۵dgr run-length with no uniformity, Teta۲, and differential entropy۲. However, the important features of the malignant class include assessment, correlation۴, Teta۱, WavEnLHs۳, contrast۵, vertical short-run emphasis, and differential entropy۲. Conclusion: It can be concluded that the proposed method has been successful in determining specific features for tumor prediction.

Authors

Mahdie Jajroudi

Pharmaceutical Research Center, Mashhad University of Medical Sciences, Mashhad, Iran

Milad Enferadi

Department of Radiology and Biomedical Imaging, Yale School of Medicine, PO Box ۲۰۸۰۴۸, New Haven, CT, ۰۶۵۲۰-۸۰۴۸, USA.

Zahra Bagherpour

Department of Medical Physics, School of Medicine, Iran University of Medical Sciences, Tehran, Iran

Reza Reiazi

Department of Radiation Physics, Division of Radiation Oncology, University of Texas MD Anderson Cancer Center, Houston, TX ۷۷۰۳۰, USA

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  • Devalapalli A, Thomas S, Mazurowski MA, Saha A, Grimm LJ. ...
  • Lee MV, Konstantinoff K, Gegios A, Miles K, Appleton C, ...
  • Partovi S, Sin D, Lu Z, Sieck L, Marshall H, ...
  • Grubstein A, Rapson Y, Stemmer SM, Allweis T, Wolff-Bar M, ...
  • Tsochatzidis L, Zagoris K, Arikidis N, Karahaliou A, Costaridou L, ...
  • Jiao Z, Gao X, Wang Y, Li J: A parasitic ...
  • Elfarra BK, Abuhaiba IS. New feature extraction method for mammogram ...
  • Cao H, Bernard S, Sabourin R, Heutte L. Random forest ...
  • Hajianfar G, shiri I, Maleki H, Haghparast A, Oveisi M. ...
  • Abdollahi H, Shiri I, Mofid B, Razzaghdoust A, Sadipour A, ...
  • Pesapane F, Rotili A, Agazzi GM, Botta F, Raimondi S, ...
  • Bagherpour Z, Enferadi M, Reiazi M, Jajroudi M, Nafissi N, ...
  • Oskouei RJ, Kor NM, Maleki SA. Data mining and medical ...
  • Starikov A, Al'Aref SJ, Singh G, Min JK. Artificial intelligence ...
  • Sogani J, Allen Jr B, Dreyer K, McGinty G. Artificial ...
  • Wang Q, Mao N, Liu M, Shi Y, Ma H, ...
  • Jingle IB, Celin JJ: Enhanced algorithms for mining optimized positive ...
  • Hu R. Medical data mining based on association rules. Comp. ...
  • Ma W, Zhao Y, Ji Y, Guo X, Jian X, ...
  • Shah SZ, Amjad M. Using frequent itemset mining for breast ...
  • Pala T, YÜCEDAĞ İ, Biberoğlu H. Association rule for classification ...
  • Karabatak M, Ince MC. An expert system for detection of ...
  • The Cancer Imaging Archive (TCIA). ۲۰۲۱ ...
  • Lee RS, Gimenez F, Hoogi A, Miyake KK, Gorovoy M, ...
  • Jantawan B, Tsai CF. A comparison of filter and wrapper ...
  • Cunningham P, Delany SJ k-Nearest neighbour classifiers. Multiple Classifier Systems. ...
  • Nahar J, Tickle KS, Ali AS, Chen YP. Significant cancer ...
  • Zhang C, Zhang S. Association rule mining: models and algorithms. ...
  • Ed-daoudy A, Maalmi K. Breast cancer classification with reduced feature ...
  • Keyvanpour, MR,Barani Shirzad M, Mahdikhani L. WARM: a new breast ...
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