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April 3, 2015

Science and medicine have a 'publication pollution' problem

The scientific community is facing a 'pollution problem' in academic publishing, one that poses a serious threat to the "trustworthiness, utility, and value of science and medicine," according to one of the country's leading medical ethicists.

Arthur L. Caplan, PhD, director of the Division of Medical Ethics in the Department of Population Health at NYU Langone Medical Center, shares these and other observations in a commentary publishing April 3 in the journal Mayo Clinic Proceedings.

"The pollution of science and medicine by plagiarism, fraud, and predatory publishing is corroding the reliability of research," writes Dr. Caplan. "Yet neither the leadership nor those who rely on the truth of science and medicine are sounding the alarm loudly or moving to fix the problem with appropriate energy."

In his commentary, Dr. Caplan describes several causes of publication pollution:

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According to Dr. Caplan: "All these polluting factors detract from the ability of scientists and physicians to trust what they read, devalue legitimate science, undermine the ability to reproduce legitimate findings, impose huge costs on the publication process, and take a toll in terms of disability and death when tests, treatments, and interventions are founded on faulty claims."

Dr. Caplan proposes a national meeting of leaders in science and medicine to lead a sustained challenge to proactively and aggressively go after this pollution problem.

"The currency of science is fragile, and allowing counterfeiters, fraudsters, bunko artists, scammers, and cheats to continue to operate with abandon in the publishing realm is unacceptable," he asserts.

Journal information: Mayo Clinic Proceedings , PLoS ONE

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