Lichtman MA. Williams manual of hematology. New York: McGraw-Hill Higher Education; 2016.
Google Scholar
Mohan H. Textbook of pathology. New Delhi: Jaypee Brothers; 2005.
Book
Google Scholar
Barbara BJ. Diagnosis from the blood smear. N Engl J Med. 2005;353(5):498–507.
Article
Google Scholar
Sadeghian F, Seman Z, Ramli AR, Abdul Kahar BH, Saripan M-I. A framework for white blood cell segmentation in microscopic blood images using digital image processing. Biol Proced Online. 2009;11:196–206. https://doi.org/10.1007/s12575-009-9011-2.
Article
Google Scholar
Mohammed EA, Mohamed MMA, Far BH, Naugler C. Peripheral blood smear image analysis: a comprehensive review. J Pathol Inf. 2014;5:9. https://doi.org/10.4103/2153-3539.129442.
Article
Google Scholar
Ghane N, Vard A, Talebi A, Nematollahy P. Segmentation of white blood cells from microscopic images using a novel combination of K-means clustering and modified watershed algorithm. J Med Signals Sens. 2017;7(2):92–101.
Google Scholar
Prinyakupt J, Pluempitiwiriyawej C. Segmentation of white blood cells and comparison of cell morphology by linear and naïve Bayes classifiers. BioMed Eng Online. 2015;14:63. https://doi.org/10.1186/s12938-015-0037-1.
Article
Google Scholar
Ramesh N, Dangott B, Salama ME, Tasdizen T. Isolation and two-step classification of normal white blood cells in peripheral blood smears. J Pathol Inf. 2012;3(1):13.
Article
Google Scholar
Mohamed MMA, Far B. A fast technique for white blood cells nuclei automatic segmentation based on gram-schmidt orthogonalization. In Tools with Artificial Intelligence (ICTAI), 2012 IEEE 24th International Conference, 2012.
Huang DC, Hung KD, Chan YK. A computer assisted method for leukocyte nucleus segmentation and recognition in blood smear images. J Syst Softw. 2012;85(9):2104–18.
Article
Google Scholar
Mohammed EA, Mohamed MM, Naugler C, Far BH. Toward leveraging big value from data: chronic lymphocytic leukemia cell classification. Netw Model Anal Health Inf Bioinform. 2017;6(1):6.
Article
Google Scholar
Zhang C, Xiao X, Li X, Chen Y, Zhen W, Chang J, Zheng C, Liu Z. White blood cell segmentation by color-space-based K-means clustering. Sensors. 2014;14:16128–47.
Article
Google Scholar
Sarrafzadeh O, Dehnavi AM. Nucleus and cytoplasm segmentation in microscopic images using K-means clustering and region growing. Adv Biomed Res. 2015;4:174. https://doi.org/10.4103/2277-9175.163998.
Article
Google Scholar
Liu Z, Liu J, Xiao X, Yuan H, Li X, Chang J, Zheng C. Segmentation of white blood cells through nucleus mark watershed operations and mean shift clustering. Sensors. 2015;15:22561–86.
Article
Google Scholar
Alférez S, Merino A, Bigorra L, Mujica L, Ruiz M, Rodellar J. Automatic recognition of atypical lymphoid cells from peripheral blood by digital image analysis. Am J Clin Pathol. 2015;143(2):168–76.
Article
Google Scholar
Fatichah C, Purwitasari D, Hariadi V, Effendy F. Overlapping white blood cell segmentation and counting on microscopic blood cell images. Int J Smart Sens Intell Syst. 2014;7(3):71–86.
Google Scholar
Mathur A, Tripathi AS, Kuse M. Scalable system for classification of white blood cells from Leishman stained blood stain images. J Pathol Inf. 2013;1:15.
Article
Google Scholar
Nazlibilek S, Karacor D, Ercan T, Sazli MH, Kalender O, Ege Y. Automatic segmentation, counting, size determination and classification of white blood cells. Measurement. 2014;55:58–65.
Article
Google Scholar
Mohammed EA, Far BH, Mohamed MMA, Naugler C. Automatic working area localization in blood smear microscopic images using machine learning algorithms. In IEEE International Conference on Bioinformatics and Biomedicine, Shanghai, 2013.
Jones KW. Evaluation of cell morphology and introduction to platelet and white blood cell morphology. Clin Hematol Fundam Hemost. 2009;93:116.
Google Scholar
Smarandache F. Neutrosophic set, a generalization of the intuitionistic fuzzy sets. Int J Pure Appl Math. 2005;24:287–97.
MathSciNet
MATH
Google Scholar
Mohamed EA. New Approach for Enhancing Image Retrieval using Neutrosophic Sets. Int J Comput Appl. 2014;95(8):0975–8887.
Google Scholar
Guo Y, Şengürb A. A novel image edge detection algorithm based on neutrosophic. Comput Electr Eng. 2014;40(8):3–25.
Article
Google Scholar
Yu B, Niu Z, Wang Z. Mean shift based clustering of neutrosophic domain for unsupervised constructions detection. Optik. 2013;124:4697–706.
Article
Google Scholar
Leng WY, Shamsuddin SM. Writer identification for Chinese handwriting. Int J Adv Soft Comput Appl. 2010;2(2):142–73.
Google Scholar
Ye J. Multicriteria decision-making method using the correlation coefficient under single-valued neutrosophic environment. Int J Gen Syst. 2013;42(4):386–94. https://doi.org/10.1080/03081079.2012.761609.
MathSciNet
Article
MATH
Google Scholar
Hanafy IM, Salama AA, Mahfouz K. Correlation of neutrosophic Data. Int Refereed J Eng Sci (IRJES). 2012;1(2):39–43.
Google Scholar
Guo Y, Şengürb A, Yec J. A novel image thresholding algorithm based on neutrosophic similarity score. Measurement. 2014;58:175–86.
Article
Google Scholar
Guo Y, Şengürb A, Tian JW. A novel breast ultrasound image segmentation algorithm based on neutrosophic similarity score and level set. Comput Methods Programs Biomed. 2016;123:43–53. https://doi.org/10.1016/j.cmpb.2015.09.007.
Article
Google Scholar
Amin KM, Shahin A, Guo Y. A novel breast tumor classification algorithm using neutrosophic score features. Measurement. 2016;81:210–20.
Article
Google Scholar
Ghosh P, Bhattacharjee D, Nasipuri M. Blood smear analyzer for white blood cell counting: a hybrid microscopic image analyzing technique. Appl Soft Comput. 2016;46:629–38. https://doi.org/10.1016/j.asoc.2015.12.038.
Article
Google Scholar
Otsu N. A threshold selection method from gray-level histograms. IEEE Trans Syst Man Cybern. 1979;9(1):62–6. https://doi.org/10.1109/tsmc.1979.4310076.
Article
Google Scholar
Mohamed M, Far B, Guaily A. An efficient technique for white blood cells nuclei automatic segmentation. In 2012 IEEE International Conference on Systems, Man, and Cybernetics (SMC), 220–225, 2012.
Mohamed, M, Far B. An enhanced threshold based technique for white blood cells nuclei automatic segmentation. In: e-Health Networking, Applications and Services (Healthcom), 2012 IEEE 14th International Conference; 2012. pp. 202–207. .
Amin MM, Kermani S, Talebi A, Oghli MG. Recognition of acute lymphoblastic leukemia cells in microscopic images using K-means clustering and support vector machine classifier. J Med Signals Sens. 2015;5(1):49.
Google Scholar
Labati RD, Piuri V, Scotti F. All-IDB: The acute lymphoblastic leukemia image database for image processing. In: 2011 18th IEEE International Conference on Image Processing; 2011. https://doi.org/10.1109/icip.2011.6115881.
Putzu L, Di Ruberto C. White blood cells identification and counting from microscopic blood image. In: Proceedings of World Academy of Science, Engineering and Technology; 2013, 73:363.
Putzu L, Caocci G, Di Ruberto C. Leucocyte classification for leukaemia detection using image processing techniques. Artif Intell Med. 2014;62(3):179–91.
Article
Google Scholar
Siuly S, Kabir E, Wang H, Zhang Y. Detection of motor imagery EEG signals employing Naïve Bayes based learning process. Measurement. 2016;86:148–58.
Article
Google Scholar
Siuly S, Li Y. Discriminating the brain activities for brain–computer interface applications through the optimal allocation-based approach. Neural Comput Appl. 2015;26(4):799–811.
Article
Google Scholar
Rezatofighi SH, Soltanian-Zadeh H. Automatic recognition of five types of white blood cells in peripheral blood. Comput Med Imaging Graph. 2011;35(4):333–43.
Article
Google Scholar
Madhloom HT, Kareem SA, Ariffin H, Zaidan AA, Alanazi HO, Zaidan BB. An automated white blood cell nucleus localization and segmentation using image arithmetic and automatic threshold. J Appl Sci. 2010;10(11):959–66.
Article
Google Scholar
Rezatofighi SH, Soltanian-Zadeh H, Sharifian R, Zoroofi RA. A new approach to white blood cell nucleus segmentation based on gram-schmidt orthogonalization. In: International Conference on Digital Image Processing, 2009.