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Communications of the ACM


Better Medicine Through Machine Learning

comparison of rib-suppressed temporal-subtraction images

Kenji Suzuki and colleagues' comparison of their rib-suppressed temporal-subtraction (TS) images with conventional TS images: (a) previous chest radiographs, (b) current chest radiographs of the same patient, (c) rib-suppressed TS images with fewer rib ar

Credit: Kenji Suzuki

Computers that tease out patterns from clinical data could improve patient diagnosis and care.

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