Phase II year
1992
(last award dollars: 1993)
Phase I demonstrated the feasibility of using Color Computer Vision and Neural Network technologies (hereafter referred to as "Neural Technologies") in classifying white blood cells. Phase II seeks to develop an instrument that fully automates the microscopic differential count using Neural Technologies. Despite the wide use of flow cytometry differential counters, there are in excess of 100 million microscopic differential counts performed annually in the United States. An instrument that automates this procedure is needed to improve the accuracy and consistency in the diagnosis and monitoring of abnormal leukocytes. The accurate and consistent classification of abnormal white cells (i. e. myelocytes, variant lymphocytes, blasts, etc.) will greatly improve the ability to monitor patients' progress during treatment (chemotherapy, radiation, etc.). Automation of the leukocyte differential is also needed to help counter the growing shortage of Technologists and the associated delays in test reporting. The automation of other microscopic procedures not involving blood cells (PAP smears, tissue sections, etc.) is possible using Neural Technologies and will be the subject of subsequent investigations.Awardee's statement of the potential commercial applications of the research:The successful automation of the microscopic differential count will establish the technological basis and commercial potential for the automation of many other microscopic cell analysis procedures (bone marrow, PAP smear, tissue sections, etc.). All of these procedures are subject to the problems of inaccuracy, inconsistency, delayed test turnaround, and escalating labor costs. An instrument that helps overcome these problems has tremendous commercial potential.National Cancer Institute (NCI)