We are entering a new era of health care that is more patient centered. Part of this new paradigm is patient access to their medical records, easily accessible from the Internet.
Mrs. Anderson called her doctor and spoke with pressured speech: “I think there is a mistake. That cannot be my ultrasound. I don’t have a gallbladder.”
Mrs. Anderson was accessing our hospital’s open EHR, which allowed her to view her radiology reports, and noticed a discrepancy. An ultrasound had been performed which identified “multiple hypoechoic lesions, incompletely characterized.” Because the lesions discovered were indistinguishable from metastatic deposits by ultrasound an MRI was correctly recommended for more definitive characterization. However, the dictating radiologists overlooked a “canned” normal finding in his final report noting the presence of a normal appearing gallbladder. Mrs. Anderson’s gallbladder had been removed surgically 10 years prior.
Mrs. Anderson’s case came to my attention when I dictated her liver MRI, comparing it to the ultrasound performed earlier in the week. The liver MRI fortunately demonstrated only multiple benign lesions. My report commented on expected post cholecystectomy changes in the right upper quadrant in the findings of the dictation but not in the impression. I did not read the portion of the prior ultrasound report describing the gallbladder because I was only concerned with the positive finding for which the MRI had been ordered, the liver lesions.
I received an e-mail the next day from the nurse practitioner (NP) caring for Mrs. Anderson. She said that Mrs. Anderson had called her office frantic that there was some kind of mix up and that her patient wanted to know which of her reports were correct. I reviewed both reports and realized there was a proofreading error on the ultrasound report, paged the dictating radiologist to amend the error, and explained to the NP how such errors occur with our speech recognition software and macros. The NP understood and said she would explain to Mrs. Anderson that both her studies were accurate except for the oversight on the ultrasound dictation which would be amended.
While the NP realized how such errors may make their way on to finalized reports, I now better understand the impact an incorrect report can have on a patient. We are entering a new era of health care that is more patient centered. Part of this new paradigm is patient access to their medical records, easily accessible from the Internet.
While physicians possess the ability to distinguish between an occasional proofing error, patients can not, nor should they be expected to. In order to increase the efficiency of radiology reporting, most institutions have moved to speech recognition (SR) software with templated macros. The potential for typographical errors has been shown to be higher using SR software than traditional transcription services.1
However, there is a paucity of literature regarding how often errors occur because of the use of pre-populated macros. I learned first hand how my words can affect a patient’s mental well being by inducing unnecessary anxiety. More and more pressure is being placed on radiologists to increase their RVUs to maintain their salaries. However, patients will not and should not excuse us from errors in what we report. In an era of more open access to all medical records, including radiology dictations, it will be critical for radiologists to take pause and examine their finalized reports carefully.
[1] J Digit Imaging. 2008 Dec;21(4):384-9. Voice recognition dictation: radiologist as transcriptionist.
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