Author/Authors :
Sexauer, Raphael Department of Radiology - University Hospital Basel - University of Basel - Basel, Switzerland , Weikert, Thomas Department of Radiology - University Hospital Basel - University of Basel - Basel, Switzerland , Mader, Kevin Department of Radiology - University Hospital Basel - University of Basel - Basel, Switzerland , Wicki, Andreas Department of Radiology - University Hospital Basel - University of Basel - Basel, Switzerland , Schadelin, Sabine Department of Radiology - University Hospital Basel - University of Basel - Basel, Switzerland , Stieltjes, Bram Department of Radiology - University Hospital Basel - University of Basel - Basel, Switzerland , Bremerich, Jens Department of Radiology - University Hospital Basel - University of Basel - Basel, Switzerland , Sommer, Gregor Department of Radiology - University Hospital Basel - University of Basel - Basel, Switzerland , Sauter, Alexander W Department of Radiology - University Hospital Basel - University of Basel - Basel, Switzerland
Abstract :
Results of PET/CT examinations are communicated as text-based reports which are frequently not fully structured. Incomplete or
missing staging information can be a significant source of staging and treatment errors. We compared standard text-based reports
to a manual full 3D-segmentation-based approach with respect to TNM completeness and processing time. TNM information was
extracted retrospectively from 395 reports. Moreover, the RIS time stamps of these reports were analyzed. 2995 lesions using a set
of 41 classification labels (TNM features + location) were manually segmented on the corresponding image data. Information
content and processing time of reports and segmentations were compared using descriptive statistics and modelling. The
TNM/UICC stage was mentioned explicitly in only 6% (n = 22) of the text-based reports. In 22% (n = 86), information was
incomplete, most frequently afiecting T stage (19%, n = 74), followed by N stage (6%, n = 22) and M stage (2%, n = 9). Full
NSCLC-lesion segmentation required a median time of 13.3 min, while the median of the shortest estimator of the text-based
reporting time (R1) was 18.1 min (p = 0.01). Tumor stage (UICC I/II: 5.2 min, UICC III/IV: 20.3 min, p < 0.001), lesion size
(p < 0.001), and lesion count (n = 1: 4.4 min, n = 12: 37.2 min, p < 0.001) correlated significantly with the segmentation time, but
not with the estimators of text-based reporting time. Numerous text-based reports are lacking staging information. A
segmentation-based reporting approach tailored to the staging task improves report quality with manageable processing time and
helps to avoid erroneous therapy decisions based on incomplete reports. Furthermore, segmented data may be used for
multimedia enhancement and automatization.