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Published in: Indian Journal of Hematology and Blood Transfusion 2/2020

01-04-2020 | Original Article

Forecasting the Amount of Blood Ordered in the Obstetrics and Gynaecology Ward with the Data Mining Approach

Authors: Tahmineh Aldaghi, Ghasemi H. Morteza, Mehrdad Kargari

Published in: Indian Journal of Hematology and Blood Transfusion | Issue 2/2020

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Abstract

Preoperative blood ordering is frequently used in the obstetrics and gynecology ward of university hospitals in Iran, even for surgeries that rarely require blood transfusions. This routine procedure is an inefficient use of resources and rising costs, wasting time and cause shortage for essential patients. So this study was carried out to propose a new optimal system based on data mining techniques for ordering blood. This cross-sectional study examined the number of units cross-matched and transfused during surgery in the obstetrics and gynecology ward from 2013 to 2015. Data was collected for 1097 patients. Statistical analyzing was applied on data to prove that; the current blood ordering was not optimal. So with use of blood indices, C/T ratio, the new blood ordering variable was introduced. Then decision tree was applied on data with use of Rapid miner. Decision tree evaluation measures were rMSE and accuracy. A total of 1097 patients were examined for which 9747 units of blood were ordered. There was a significant difference between the number of cross-matched and transfused units according to all variables. The new method reduced the cross-matched units about 71.50%. The accuracy of proposed decision tree based on new blood ordering variable (according to C/T index) was 96.10%. The effective variables of blood ordered were type of surgery, blood group and amount of hemoglobin. The recent blood ordering variable prevent blood shortages, reduce costs. Excessive blood ordering is common in the obstetrics and gynecology department. According to proper results of new ordering variable, we suggest to apply this procedure in all hospitals in order to reduce extra costs and the optimal management of blood ordering.
Footnotes
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Root mean square error.
 
Literature
1.
go back to reference Peña JR (2014) Utilization management in the blood transfusion service. Clin Chim Acta 427:178–182PubMedCrossRef Peña JR (2014) Utilization management in the blood transfusion service. Clin Chim Acta 427:178–182PubMedCrossRef
2.
go back to reference Ngai EWT, Hu Y, Wong YH, Chen Y, Sun X (2011) The application of data mining techniques in financial fraud detection: a classification framework and an academic review of literature. Decis Support Syst 50(3):559–569CrossRef Ngai EWT, Hu Y, Wong YH, Chen Y, Sun X (2011) The application of data mining techniques in financial fraud detection: a classification framework and an academic review of literature. Decis Support Syst 50(3):559–569CrossRef
3.
go back to reference Ngai EW, Xiu L, Chau DC (2009) Application of data mining techniques in customer relationship management: a literature review and classification. Expert Syst Appl 36(2):2592–2602CrossRef Ngai EW, Xiu L, Chau DC (2009) Application of data mining techniques in customer relationship management: a literature review and classification. Expert Syst Appl 36(2):2592–2602CrossRef
4.
go back to reference Costa EB, Fonseca B, Santana MA, de Araújo FF, Rego J (2017) Evaluating the effectiveness of educational data mining techniques for early prediction of students’ academic failure in introductory programming courses. Comput Hum Behav 73:247–256CrossRef Costa EB, Fonseca B, Santana MA, de Araújo FF, Rego J (2017) Evaluating the effectiveness of educational data mining techniques for early prediction of students’ academic failure in introductory programming courses. Comput Hum Behav 73:247–256CrossRef
5.
go back to reference Varlamis I, Apostolakis I, Sifaki-Pistolla D, Dey N, Georgoulias V, Lionis C (2017) Application of data mining techniques and data analysis methods to measure cancer morbidity and mortality data in a regional cancer registry: the case of the island of Crete, Greece. Comput Methods Programs Biomed 145:73–83PubMedCrossRef Varlamis I, Apostolakis I, Sifaki-Pistolla D, Dey N, Georgoulias V, Lionis C (2017) Application of data mining techniques and data analysis methods to measure cancer morbidity and mortality data in a regional cancer registry: the case of the island of Crete, Greece. Comput Methods Programs Biomed 145:73–83PubMedCrossRef
6.
go back to reference Park A, Baek SJ, Shen A, Hu J (2013) Detection of Alzheimer’s disease by Raman spectra of rat’s platelet with a simple feature selection. Chemom Intell Lab Syst 121:52–56CrossRef Park A, Baek SJ, Shen A, Hu J (2013) Detection of Alzheimer’s disease by Raman spectra of rat’s platelet with a simple feature selection. Chemom Intell Lab Syst 121:52–56CrossRef
7.
go back to reference Srinivas K, Rani BK, Govrdhan A (2010) Applications of data mining techniques in healthcare and prediction of heart attacks. Int J Comput Sci Eng (IJCSE) 2(02):250–255 Srinivas K, Rani BK, Govrdhan A (2010) Applications of data mining techniques in healthcare and prediction of heart attacks. Int J Comput Sci Eng (IJCSE) 2(02):250–255
8.
go back to reference Obenshain Mary K (2004) Application of data mining techniques to healthcare data. Infect Control Hosp Epidemiol 25(08):690–695PubMedCrossRef Obenshain Mary K (2004) Application of data mining techniques to healthcare data. Infect Control Hosp Epidemiol 25(08):690–695PubMedCrossRef
9.
go back to reference Quinlan JR (1979) Discovering rules by induction from large collections of examples. Expert systems in the micro electronic age. Edinburgh University Press, Edinburgh Quinlan JR (1979) Discovering rules by induction from large collections of examples. Expert systems in the micro electronic age. Edinburgh University Press, Edinburgh
10.
go back to reference Quilan JR (1983) Learning efficient classification procedures and their application to chess end games. Mach Learn: Artif Intell Approach 1:463–482 Quilan JR (1983) Learning efficient classification procedures and their application to chess end games. Mach Learn: Artif Intell Approach 1:463–482
11.
go back to reference Quinlan JR (2014) C4. 5: programs for machine learning. Elsevier, Amsterdam Quinlan JR (2014) C4. 5: programs for machine learning. Elsevier, Amsterdam
12.
go back to reference Yoo I, Alafaireet P, Marinov M, Pena-Hernandez K, Gopidi R, Chang JF, Hua L (2012) Data mining in healthcare and biomedicine: a survey of the literature. J Med Syst 36(4):2431–2448PubMedCrossRef Yoo I, Alafaireet P, Marinov M, Pena-Hernandez K, Gopidi R, Chang JF, Hua L (2012) Data mining in healthcare and biomedicine: a survey of the literature. J Med Syst 36(4):2431–2448PubMedCrossRef
13.
go back to reference Ayantunde AA, Ng MY, Pal S, Welch NT, Parsons SL (2008) Analysis of blood transfusion predictors in patients undergoing elective oesophagectomy for cancer. BMC Surg 8(1):3PubMedPubMedCentralCrossRef Ayantunde AA, Ng MY, Pal S, Welch NT, Parsons SL (2008) Analysis of blood transfusion predictors in patients undergoing elective oesophagectomy for cancer. BMC Surg 8(1):3PubMedPubMedCentralCrossRef
14.
go back to reference Foley CL, Mould T, Kennedy JE, Barton DP (2003) A study of blood cross-matching requirements for surgery in gynecological oncology: improved efficiency and cost saving. Int J Gynecol Cancer 13(6):889–893PubMedCrossRef Foley CL, Mould T, Kennedy JE, Barton DP (2003) A study of blood cross-matching requirements for surgery in gynecological oncology: improved efficiency and cost saving. Int J Gynecol Cancer 13(6):889–893PubMedCrossRef
15.
go back to reference Shaker H, Wijesinghe M, Farooq A, Artioukh DY (2012) Cross-matched blood in colorectal surgery: a clinical waste? Colorectal Dis 14(1):115–118PubMedCrossRef Shaker H, Wijesinghe M, Farooq A, Artioukh DY (2012) Cross-matched blood in colorectal surgery: a clinical waste? Colorectal Dis 14(1):115–118PubMedCrossRef
16.
go back to reference Feliu F, Rueda JC, Ramiro L, Olona M, Escuder J, Gris F, Jiménez A, Duque E, Vicente V (2014) Preoperative blood ordering in elective colon surgery: requirement or routine? Cir Esp 92(1):44–51 (English Edition) PubMedCrossRef Feliu F, Rueda JC, Ramiro L, Olona M, Escuder J, Gris F, Jiménez A, Duque E, Vicente V (2014) Preoperative blood ordering in elective colon surgery: requirement or routine? Cir Esp 92(1):44–51 (English Edition) PubMedCrossRef
17.
go back to reference Friedman BA, Oberman HA, Chadwick AR, Kingon KI (1976) The Maximum surgical blood order schedule and surgical blood use in the United Stated. Transfusion 16:380–387PubMedCrossRef Friedman BA, Oberman HA, Chadwick AR, Kingon KI (1976) The Maximum surgical blood order schedule and surgical blood use in the United Stated. Transfusion 16:380–387PubMedCrossRef
18.
go back to reference Richardson NG, Bradley WN, Donaldson DR, O’Shaughnessy DF (1998) Maximum surgical blood ordering schedule in a district general hospital saves money and resources. Ann R Coll Surg Engl 80(4):262PubMedPubMedCentral Richardson NG, Bradley WN, Donaldson DR, O’Shaughnessy DF (1998) Maximum surgical blood ordering schedule in a district general hospital saves money and resources. Ann R Coll Surg Engl 80(4):262PubMedPubMedCentral
19.
go back to reference Fernández AM, Cronin J, Greenberg RS, Heitmiller ES, Anderson B (2014) Pediatric preoperative blood ordering: when is a type and screen or crossmatch really needed?. Pediatr Anesth 24(2):146–150CrossRef Fernández AM, Cronin J, Greenberg RS, Heitmiller ES, Anderson B (2014) Pediatric preoperative blood ordering: when is a type and screen or crossmatch really needed?. Pediatr Anesth 24(2):146–150CrossRef
20.
go back to reference Singh B, Adhikari N, Ghimire S, Dhital S (2015) Post-operative drop in hemoglobin and need of blood transfusion in cesarean section at Dhulikhel Hospital, Kathmandu University Hospital. Kathmandu Univ Med J 11(2):144–146CrossRef Singh B, Adhikari N, Ghimire S, Dhital S (2015) Post-operative drop in hemoglobin and need of blood transfusion in cesarean section at Dhulikhel Hospital, Kathmandu University Hospital. Kathmandu Univ Med J 11(2):144–146CrossRef
21.
go back to reference Tay YW, Woo YL, Tan HC (2016) Routine pre-operative group cross-matching in total knee arthroplasty: a review of this practice in an Asian population. Knee 23(2):306–309PubMedCrossRef Tay YW, Woo YL, Tan HC (2016) Routine pre-operative group cross-matching in total knee arthroplasty: a review of this practice in an Asian population. Knee 23(2):306–309PubMedCrossRef
22.
go back to reference Kraft MR, Desouza KC, Androwich I (2003) Data mining in healthcare information systems: case study of a veterans’ administration spinal cord injury population. In: Proceedings of the 36th annual Hawaii international conference on system sciences, 2003. IEEE, p 9 Kraft MR, Desouza KC, Androwich I (2003) Data mining in healthcare information systems: case study of a veterans’ administration spinal cord injury population. In: Proceedings of the 36th annual Hawaii international conference on system sciences, 2003. IEEE, p 9
23.
go back to reference Chae YM, Kim HS, Tark KC, Park HJ, Ho SH (2003) Analysis of healthcare quality indicator using data mining and decision support system. Expert Syst Appl 24(2):167–172CrossRef Chae YM, Kim HS, Tark KC, Park HJ, Ho SH (2003) Analysis of healthcare quality indicator using data mining and decision support system. Expert Syst Appl 24(2):167–172CrossRef
Metadata
Title
Forecasting the Amount of Blood Ordered in the Obstetrics and Gynaecology Ward with the Data Mining Approach
Authors
Tahmineh Aldaghi
Ghasemi H. Morteza
Mehrdad Kargari
Publication date
01-04-2020
Publisher
Springer India
Published in
Indian Journal of Hematology and Blood Transfusion / Issue 2/2020
Print ISSN: 0971-4502
Electronic ISSN: 0974-0449
DOI
https://doi.org/10.1007/s12288-019-01203-9

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