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CIALAB member has won Medical Center Research Day Travel Award

With his poster presentation entitled "Histopathological Image Analysis", Olcay Sertel, a member of the Clinical Image Analysis Lab,won a travel award at the Ohio State University Medical Center Research Day, held on April 2nd. Research Day is an annual event featuring the biomedical research of trainees within the OSU Medical Center. Held each spring, Research Day features a poster display, with a judging and presentation of awards for outstanding research, as well as presentations on current topics by world renowned researchers and experts in the field of biomedical science.

Of the 304 research trainees participating in the 2008 event, 31 were chosen to receive awards. The 2008 Research Day award winners included one undergraduate student, five postdoctoral trainees, three residents or clinical fellows, 11 graduate students, ten medical students, and one MD/PhD(Medical Scientist) student. These trainees each received a travel award,which will allow them to attend and present their research at a scientific meeting of their choice.

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  1. We developed our solutions based on understanding of the imaging clinical trial process & unfulfilled needs of the trial sponsor & various participants in the trials

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