Original Paper
Abstract
Background: Natural language processing (NLP) methods are powerful tools for extracting and analyzing critical information from free-text data. MedTaggerIE, an open-source NLP pipeline for information extraction based on text patterns, has been widely used in the annotation of clinical notes. A rule-based system, MedTagger-total hip arthroplasty (THA), developed based on MedTaggerIE, was previously shown to correctly identify the surgical approach, fixation, and bearing surface from the THA operative notes at Mayo Clinic.
Objective: This study aimed to assess the implementability, usability, and portability of MedTagger-THA at two external institutions, Michigan Medicine and the University of Iowa, and provide lessons learned for best practices.
Methods: We conducted iterative test-apply-refinement processes with three involved sites—the development site (Mayo Clinic) and two deployment sites (Michigan Medicine and the University of Iowa). Mayo Clinic was the primary NLP development site, with the THA registry as the gold standard. The activities at the two deployment sites included the extraction of the operative notes, gold standard development (Michigan: registry data; Iowa: manual chart review), the refinement of NLP algorithms on training data, and the evaluation of test data. Error analyses were conducted to understand language variations across sites. To further assess the model specificity for approach and fixation, we applied the refined MedTagger-THA to arthroscopic hip procedures and periacetabular osteotomy cases, as neither of these operative notes should contain any approach or fixation keywords.
Results: MedTagger-THA algorithms were implemented and refined independently for both sites. At Michigan, the study comprised THA-related notes for 2569 patient-date pairs. Before model refinement, MedTagger-THA algorithms demonstrated excellent accuracy for approach (96.6%, 95% CI 94.6%-97.9%) and fixation (95.7%, 95% CI 92.4%-97.6%). These results were comparable with internal accuracy at the development site (99.2% for approach and 90.7% for fixation). Model refinement improved accuracies slightly for both approach (99%, 95% CI 97.6%-99.6%) and fixation (98%, 95% CI 95.3%-99.3%). The specificity of approach identification was 88.9% for arthroscopy cases, and the specificity of fixation identification was 100% for both periacetabular osteotomy and arthroscopy cases. At the Iowa site, the study comprised an overall data set of 100 operative notes (50 training notes and 50 test notes). MedTagger-THA algorithms achieved moderate-high performance on the training data. After model refinement, the model achieved high performance for approach (100%, 95% CI 91.3%-100%), fixation (98%, 95% CI 88.3%-100%), and bearing surface (92%, 95% CI 80.5%-97.3%).
Conclusions: High performance across centers was achieved for the MedTagger-THA algorithms, demonstrating that they were sufficiently implementable, usable, and portable to different deployment sites. This study provided important lessons learned during the model deployment and validation processes, and it can serve as a reference for transferring rule-based electronic health record models.
doi:10.2196/38155
Keywords
Introduction
Background
Natural language processing (NLP) methods are powerful tools for extracting information from textual data and are widely applied in medical informatics research [
]. NLP approaches transform unstructured free-text clinical notes into a structured and codified format, thereby reducing human effort on chart reviews in large population-based studies [ - ]. Previous studies have demonstrated that NLP can be an alternative to manual abstraction in many applications, including deidentification, classification, and extraction of medical concepts (eg, clinical symptoms, diagnoses, and medications), semantic modifiers (eg, negation and severity), and temporality information (eg, present vs past; [ , ]). In addition, high-quality NLP approaches applied to real-world data can facilitate clinical registry participation and analysis [ ] to further advance clinical research, policy, and surveillance efforts [ , , ].In prior research, Wyles et al [
] developed an NLP system to extract common data elements related to total hip arthroplasty (THA) from the operative notes in electronic health records (EHRs). This NLP system contains 3 separate algorithms aimed at capturing the operative approach, fixation method, and bearing surface categories [ , ]. The infrastructure of the NLP system was an open-source NLP pipeline, MedTaggerIE [ ], which was developed using an open-source unstructured information management architecture–based information extraction framework [ ]. MedTaggerIE contains the following three components: keyword lists (ie, domain-based keywords and short phrases, including wildcard regular expressions), classification rules (ie, regular expression-based patterns to derive the predicted label), and normalization (eg, a standardized form of any THA-related clinical concept). The classification rules take ≥1 regular expression as the input value to extract relevant information. The extracted concepts are normalized to the expected targets as output values. As keywords and phrases containing clinical information can be directly defined by subject matter experts (eg, orthopedic surgeons), the pipeline separates task-specific NLP knowledge engineering from the generic-domain NLP. The final system (referred to as MedTagger-THA) was evaluated on 250 THA procedures performed at the Mayo Clinic and demonstrated high accuracy in identifying the abovementioned 3 data elements [ ]. The authors found MedTagger-THA to be a promising alternative to the current gold standard of manual chart review for identifying common data elements from orthopedic operative notes [ ].Although typically, the transferability of informatics tools across sites is poor [
] unless explicitly designed for, this data element extraction task is inherently portable across different sites. This is because the development site and the deployment sites (1) share common keywords for approach and fixation and (2) have common rules to classify approach and fixation. Some examples of such common rules include labeling “cement femur” and “uncemented shell” as “hybrid” and no “cement” mentions to indicate “uncemented.” However, prior studies have not broadly evaluated whether existing systems, when applied across multiple institutions with heterogeneous EHR systems, are sufficiently implementable (ie, whether the system can be deployed at a different site), usable (ie, whether the system can be easily modified and refined by local users), and portable (ie, whether the system can achieve sufficiently similar results after refinement). Prior studies have shown that significant effort is required for users to apply existing NLP systems [ ]. In the context of multi-institutional collaboration, studies have indicated various administrative and implementation challenges such as data privacy; workforce expertise; and the maturity of location extract, transform, and load (ETL) processes [ ]. For example, clinical NLP algorithms are often difficult to assess in different hospital settings because of patient confidentiality and difficulties in technology transfer [ ]. In addition, the performances of clinical NLP systems, as well as clinical practice and workflows, often vary across institutions and source data [ , ], which results in differences in documentation styles in EHRs [ ]. The clinical note structures and languages used within notes can be very different across institutions because of both syntactic variation and semantic variation in the text [ ], highlighting the importance of correctly identifying sections [ , ] and semantic lexicon construction for extracting and encoding clinical information from EHRs to achieve semantic interoperability in developing NLP systems [ ]. Therefore, to achieve better portability, all these factors must be considered when applying an NLP algorithm developed from one institution to another. In most cases, customization is necessary to achieve a desirable performance and further improve portability.Objectives
To assess and improve the implementability, portability, and usability of MedTagger-THA, we performed a pilot study to establish an efficient pipeline for transferring MedTagger-THA to 2 external institutions (Michigan Medicine and the University of Iowa) to provide lessons learned for best practices. This study included both common generic processes (eg, task definition, exchanging NLP resources, and training and evaluation) and site-specific processes. Specifically, we established the infrastructure to run MedTagger-THA, including accessing the electronic surgical notes, security clearance for implementation of the MedTagger software tool kit, and running and refining MedTagger-THA. MedTagger-THA algorithms were implemented and refined independently for both sites. At Michigan, we evaluated whether MedTagger-THA can accurately extract information on surgical approach and fixation from operative notes using the Michigan Arthroplasty Registry Collaborative Quality Initiative (MARCQI) registry as the gold standard. We assessed the out-of-box (prerefinement) validation performances and postrefinement performances on the extraction of approach and fixation. Finally, we assessed the specificity of these 2 data elements’ extraction using periacetabular osteotomy (PAO) and hip arthroscopy cases. As there was no existing arthroplasty registry at the Iowa site, manual chart review was used as the gold standard. We conducted a standardized gold standard development process, which included retrieving operative notes, developing annotation guidelines, and performing corpus annotation. We then used the gold standard to refine and evaluate the MedTagger-THA system for all three data elements—surgical approach, fixation, and bearing surface.
Methods
System Deployment of MedTagger
MedTagger deployment was an iterative test-apply-refinement process involving close collaboration among sites (
). There were three involved sites: a development site (the site that developed the initial MedTagger-THA system, Mayo Clinic, shown in blue boxes) and 2 deployment sites (Michigan Medicine and the University of Iowa, shown in orange boxes). The initial step was to form an interdisciplinary study team with diverse backgrounds and expertise in orthopedics, information technology, informatics, and epidemiology. Once the team was established, the process was kicked off with several important administrative activities, including institutional review board (IRB) approval and system security clearance.In addition to the administrative process, research activities were initiated simultaneously. System preparation and packaging were the initial steps at the development site. These steps focused on ascertaining whether the system was usable and interoperable at the deployment site. The NLP system contained two components: (1) a generic MedTagger framework (eg, sentence annotator, tokenizer, and part-of-speech tagger) and (2) MedTagger-THA algorithms (keyword lists and classification rules) that were developed and distributed separately from the main program. This architecture design allows THA algorithms to be easily plugged into the main program for better customizability. Therefore, the initial process was to separate the MedTagger-THA algorithms from the main program in MedTagger for distribution purposes. Following that, the next steps were to prepare the deployment site instructions, which included specifying the input text format (eg, rtf, xml, or plain text), preprocessing instructions, system directories, and system-level instructions and requirements: (1) operating system compatibility (PC, MAC, and Linux), (2) software and packages (Java 1.8), and (3) license (Apache version 2.0). Finally, for code exchange, we used the software development and version control platform Git.
Michigan Site Process
Overview
The MARCQI is a group of orthopedic surgeons and medical professionals dedicated to improving the quality of care for patients undergoing hip and knee replacement procedures at Michigan Medicine. The consortium improves the quality of care by addressing variations in patient outcomes related to hip and knee joint replacement surgery [
]. THA cases were abstracted at Michigan Medicine and entered into the MARCQI data repository, including the date of surgery; laterality (left or right); and surgical approach, fixation, and bearing surface. In this study, the MARCQI registry was considered the gold standard to evaluate the automated algorithms. The surgical approach documented in the MARCQI included “Anterior,” “Anterolateral,” “Posterior,” and “Transtrochanteric.” The fixation methods included “Cemented,” “Uncemented,” “Hybrid,” and “Reverse Hybrid.” The bearing surface materials included “Ceramic-on-polyethylene,” “Metal-on-polyethylene,” and “Dual Mobility.”We extracted the operative notes for elective and conversion primary THA performed between January 1, 2014, and April 30, 2019, from the Epic-based Michigan Medicine EHR system. As the bearing surface was captured by catalog numbers of implants used and not by notes abstraction, we only assessed the accuracy, precision, recall, and F1-score of the algorithms on approach and fixation. All 95% CIs were obtained using the procedure by Agresti and Coull [
].In addition to THA, PAO and arthroscopy procedures are also conducted in Michigan Medicine and are sometimes applied to patients with THA. As these surgical procedures have some common features (such as approach), we believe it is necessary to assess the specificity of the algorithm to evaluate whether it is overly generalized. To assess the specificity of fixation, we applied the algorithms to PAO and hip arthroscopy cases as neither of these should have any kind of fixation that we were assessing. Hip arthroscopy cases were also used to assess the specificity of the algorithms for identifying the approach as arthroscopic hip procedures should not have an identified approach, as they were conducted through portals.
The note-processing pipeline that we established involved several steps (
).Notes Identification and Integration
We first identified distinct patient-date pairs from THA notes, which represented procedures conducted on certain dates over specific individuals. For each patient, we ordered the notes by note documentation time and gathered all the notes that were within a 15-day interval as a note set for 1 operation. For 1 note set, we took the first documentation time to represent the patient’s procedure date. We then mapped patient-date pairs to the MARCQI data set. For patients with PAO and arthroscopy, we used the same 15-day window to integrate notes for unique patient-date pairs.
Notes Segmentation
For each unique patient-date pair, we first segmented the note sets by section headers. The section headers parsed from the THA notes are listed in Table S1 in
, which include concepts of preoperative diagnosis, procedure, findings, and implants. Among these headers, the section headers that were most likely to be semantically related to “procedures” (Table S2 in ) were predefined in the Michigan data. To refine the MedTagger-THA model using Michigan data, we first randomly split the data set into training (80%) and test (20%) sets based on unique patients. As the MARCQI only began to collect fixation data in 2017, THA notes before 2017 were excluded from these analyses.Annotation by Header Sections
For each unique patient-date pair, the approach and fixation keywords were extracted from all relevant sections. The initial approach and fixation keywords were predefined using the keyword lists published previously [
]. As defined in the study by Wyles et al [ ], “The assertion of each concept includes certainty (i.e., positive, negative, and possible) along with the person who experienced the event (i.e., the patient or someone else, such as husband, child, etc.), whereas temporality identifies the timing of an event (i.e., historical or present).” Concept with “positive” certainty, “present” temporality, and the “patient” who experienced the event is the concept of interest.Label Prediction and Normalization
Classification rules comprising regular expressions were applied to derive prediction labels. The initial classification rules have been published previously [
]. For approach, the labels included “Anterior,” “Anterolateral,” “Posterior,” and “Transtrochanteric.” For fixation, the labels included “Cemented,” “Hybrid,” “Uncemented,” and “Reverse Hybrid.” The prediction labels also included two special conditions—if no annotation was given by any section, the final prediction would be “missing,” and if multiple annotations were given but were not the same, the final prediction would be “ambiguous.” For both the training and test sets, we applied MedTagger-THA [ ] to extract the approach and fixation and evaluated their out-of-box performance.Error Analysis
We then worked with the MARCQI abstraction professional to resolve the misclassifications, missing predictions, and ambiguous predictions in the training data set. We iteratively tuned the MedTagger-THA model [
] by adding keywords to the approach and fixation keyword lists and modifying the classification rules until the model performance could not be improved on the training data set. The test data set was not used during the refining process. After the refining process, we obtained the updated keyword lists and classification rules (Table S3 in ). Thus, in the following text, the refined MedTagger-THA obtained is referred to as MedTagger-THA-Michigan.Assessment of THA Test Notes
We assessed the performance of MedTagger-THA-Michigan on the test data set. We further performed an error analysis on the test data set to analyze the limitations of the model. Finally, we evaluated the specificity of approach and fixation extraction from PAO and hip arthroscopy cases.
shows the workflow of the Michigan identification pipeline.Iowa Site Process
We concurrently deployed the system at the University of Iowa. The gold standard corpus for the evaluation of the NLP system was established through a standard corpus annotation process [
]. A trained nurse abstractor manually reviewed 100 operative reports randomly sampled from known THA procedures between January 1, 2009, and December 31, 2016, from Iowa’s Epic-based EHRs. Questions regarding the abstracted data were resolved upon consultation with a physician with content expertise. Chart review was conducted using the same concept definition as that based on the total joint arthroplasty registry; in addition to approach and fixation, data collection included bearing surface classified into four categories: metal-on-polyethylene, ceramic-on-polyethylene, metal-on-metal, and ceramic-on-ceramic. The gold standard data set was equally split into 2 subsets of 50 training instances and 50 test instances. We followed an iterative training and refining process [ ] to evaluate and refine the NLP algorithms. Briefly, the prototype system, MedTagger-THA, was applied to the training data. Error cases were manually reviewed by a team of researchers at Iowa with experience in informatics and clinical documentation to identify key errors or themes leading to missing or misclassified results. The keywords were manually curated through an iterative refining process until all major issues were resolved.Ethics Approval
The study was approved by the IRBs at both the University of Michigan (HUM00143841) and the University of Iowa (201903205).
Results
Michigan Site Results
For THA notes, 2304 unique patients with 2569 patient-date pairs were mapped to the MARCQI registry data set. From the PAO notes and arthroscopy notes, 398 and 523 patient-date pairs were extracted, respectively. For approach and fixation, the out-of-box external validation of the MedTagger-THA algorithms demonstrated excellent accuracy (surgical approach: 96.6%, 95% CI 94.6%-97.9%; fixation: 95.7%, 95% CI 92.4%-97.6%;
and ).Gold standard | MedTagger-THA, n (%) | |||||
Anterior | Anterolateral | Posterior | Ambiguous | Missing inference | ||
Training data (n=2062) | ||||||
Anterior | 261 (12.7) | 0 (0) | 2 (0.1) | 1 (0) | 0 (0) | |
Anterolateral | 0 (0) | 1 (0) | 2 (0.1) | 0 (0) | 1 (0) | |
Posterior | 4 (0.2) | 2 (0.1) | 1737 (84.2) | 1 (0) | 50 (2.4) | |
Test data (n=507) | ||||||
Anterior | 68 (13.4) | 0 (0) | 0 (0) | 0 (0) | 0 (0) | |
Anterolateral | 0 (0) | 1 (0.2) | 0 (0) | 0 (0) | 0 (0) | |
Posterior | 0 (0) | 1 (0.2) | 421 (83) | 0 (0) | 15 (3) | |
Transtrochanteric | 0 (0) | 0 (0) | 0 (0) | 0 (0) | 1 (0.2) |
aAccuracy: 96.6% (95% CI 94.6%-97.9%); precision: 99.8% (95% CI 98.7%-100%); recall: 96.6% (95% CI 94.6%-97.9%); F1-score: 98.2% (95% CI 96.5%-99.1%).
Gold standard | MedTagger-THA, n (%) | ||||
Cemented | Hybrid | Uncemented | Ambiguous | ||
Training data (n=1053) | |||||
Cemented | 0 (0) | 1 (0.1) | 0 (0) | 0 (0) | |
Hybrid | 1 (0.1) | 76 (7.2) | 3 (0.3) | 17 (1.6) | |
Uncemented | 0 (0) | 29 (2.8) | 925 (87.8) | 1 (0.1) | |
Test data (n=256) | |||||
Cemented | 0 (0) | 0 (0) | 0 (0) | 0 (0) | |
Hybrid | 0 (0) | 23 (9) | 2 (0.8) | 5 (2) | |
Uncemented | 0 (0) | 4 (1.6) | 222 (86.7) | 0 (0) |
aAccuracy: 95.7% (95% CI 92.4%-97.6%); precision: 95.7% (95% CI 92.4%-97.6%); recall: 95.7% (95% CI 92.4%-97.6%); F1-score: 95.7% (95% CI 92.4%-97.6%).
The classification errors, ambiguous cases, and missing inferences are listed in
. Classification errors for approach occurred when (1) the notes in one section contained mentions for a different approach, whereas the mentions for the correct approach were missing; (2) the mentions for a different approach were extracted from sections other than “procedure and findings”; and (3) the section of “procedure and findings” contained many different mentions for approach. Ambiguous cases occurred when mentions for the correct approach were extracted from notes related to “procedures and findings,” and different approach mentions were also extracted from other sections for a single surgery. Missing inferences occurred when the mentions for approach were missing in the notes or when the mentions were misspelled. Common classification errors for fixation occurred when the certainty of inference was incorrectly assessed. For example, for “non cemented stem,” the certainty was assessed as “positive” instead of “negative,” which resulted in an “Uncemented” fixation instance being misclassified as “Hybrid.” If the stem mentioned in the notes was not included in the predefined keyword list (eg, “femur”), a “Hybrid” instance was misclassified as “Uncemented,” or a “Cemented” instance was misclassified as “Hybrid.” “Hybrid” instances could also be misclassified as “Cemented” when “Cemented” was explicitly stated in the notes and a Stem Concept was noted, as the algorithm treated “Cemented” as a direct mention of cemented fixation. Similar situations were observed in ambiguous cases, where some sections misclassified “Hybrid” instances as “Cemented,” whereas others gave the correct classification. An “Uncemented” instance was inferred as a default fixation label when there was no mention of the “cement concept.” Therefore, if there was no mention of the “cement concept” explicitly, even if the surgery was “Cemented” or “Hybrid,” it was classified as “Uncemented.”Keyword | Classification error | Ambiguous cases | Missing |
Approach |
|
|
|
Fixation |
|
|
|
aTHA: total hip arthroplasty.
bConcept name.
After model refinement (
and ), the validation accuracies improved for both surgical approach and fixation (approach: 99%, 95% CI 97.6%-99.6% vs 96.6%; fixation: 98%, 95% CI 95.3%-99.3% vs 95.7%). Giving priorities to sections related to “procedures” reduced the ambiguous cases for fixation (from 5 to 2). For specificity assessment, we identified the approach mentioned in 11.1% (58/523) of patient-date pairs for the arthroscopy data set (specificity: 465/523, 88.9%). These false positives were mainly because of the keywords for the approach mentioned in the notes, such as “Hana table,” “anterior superior iliac spine,” or “tensor fascia lata,” although these mentions described positioning and portal placement. At times, arthroscopy was combined with PAO in a procedure, and the mentions for approach could be related to PAO. We did not identify any fixation mentioned in the PAO cohort or in the arthroscopy cohort (specificity 100%).Gold standard | MedTagger-THA-Michigan, n (%) | ||||
Anterior | Anterolateral | Posterior | Ambiguous | Missing inference | |
Anterior | 68 (13.4) | 0 (0) | 0 (0) | 0 (0) | 0 (0) |
Anterolateral | 0 (0) | 1 (0.2) | 0 (0) | 0 (0) | 0 (0) |
Posterior | 0 (0) | 0 (0) | 434 (85.6) | 0 (0) | 3 (0.6) |
Transtrochanteric | 0 (0) | 0 (0) | 1 (0.2) | 0 (0) | 0 (0) |
aAccuracy: 99% (95% CI 97.6%-99.6%); precision: 99.6% (95% CI 98.4%-100%); recall: 99% (95% CI 97.6%-99.6%); F1-score: 99.3% (95% CI 98%-99.8%).
Gold standard | MedTagger-THA-Michigan, n (%) | |||
Cemented | Hybrid | Uncemented | Ambiguous | |
Cemented | 0 (0) | 0 (0) | 0 (0) | 0 (0) |
Hybrid | 1 (0.4) | 26 (10.2) | 1 (0.4) | 2 (0.8) |
Uncemented | 0 (0) | 1 (0.4) | 225 (87.9) | 0 (0) |
aAccuracy: 98% (95% CI 95.3%-99.3%); precision: 98% (95% CI 95.3%-99.3%); recall: 98% (95% CI 95.3%-99.3%); F1-score: 98% (95% CI 95.3%-99.3%).
Iowa Site Results
No registry data were available at the University of Iowa. Therefore, we performed a manual chart review of a total of 100 operative reports (50 training reports and 50 test reports) and tested the performance of MedTagger-THA on this data set for approach (
), fixation ( ), and bearing surface ( ). Overall, the model achieved moderate-high performance on the training data, with the lowest performance observed for the bearing surface concept. Model refinement included modifying the default output for the bearing surface to match the case distribution of Iowa’s data and adding additional liner-related concepts (eg, A-class liner) to improve the sensitivity of the fixation category. After model refinement, the model achieved high performance for all three data elements: approach (100%, 95% CI 91.3%-100%), fixation (98%, 95% CI 88.3%-100%), and bearing surface (92%, 95% CI 80.5%-97.3%).Gold standard | MedTagger-THA-Iowa, n (%) | Total, n (%) | |||||||
Anterior | Anterolateral | Posterior | |||||||
Training data (n=50) | |||||||||
Anterior | 12 (24) | 1 (2) | 0 (0) | 13 (26) | |||||
Anterolateral | 0 (0) | 0 (0) | 0 (0) | 0 (0) | |||||
Posterior | 0 (0) | 0 (0) | 37 (74) | 37 (74) | |||||
Test data (n=50) | |||||||||
Anterior | 14 (28) | 0 (0) | 0 (0) | 14 (28) | |||||
Anterolateral | 0 (0) | 0 (0) | 0 (0) | 0 (0) | |||||
Posterior | 0 (0) | 0 (0) | 36 (72) | 36 (72) |
aAccuracy: 100% (95% CI 91.3%-100%); precision 100% (95% CI 91.3%-100%); recall: 100% (95% CI 91.3%-100%); F1-score: 100% (95% CI 91.3%-100%).
Gold standard | MedTagger-THA-Iowa, n (%) | Total, n (%) | ||||
Cemented | Hybrid | Uncemented | ||||
Training data (n=50) | ||||||
Cemented | 0 (0) | 0 (0) | 0 (0) | 0 (0) | ||
Hybrid | 0 (0) | 1 (2) | 0 (0) | 1 (2) | ||
Uncemented | 0 (0) | 0 (0) | 49 (98) | 49 (98) | ||
Test data (n=50) | ||||||
Cemented | 0 (0) | 0 (0) | 0 (0) | 0 (0) | ||
Hybrid | 1 (2) | 0 (0) | 0 (0) | 1 (2) | ||
Uncemented | 0 (0) | 0 (0) | 49 (98) | 49 (98) |
aAccuracy: 98% (95% CI 88.3%-100%); precision: 98% (95% CI 88.3%-100%); recall: 98% (95% CI 88.3%-100%); F1-score: 98% (95% CI 88.3%-100%).
Gold standard | MedTagger-THA-Iowa, n (%) | Total, n (%) | ||||||||||
MoPb | CoPc | MoMd | CoCe | |||||||||
Training data (n=50) | ||||||||||||
MoP | 25 (50) | 1 (2) | 1 (2) | 0 (0) | 27 (54) | |||||||
CoP | 0 (0) | 17 (34) | 0 (0) | 0 (0) | 17 (34) | |||||||
MoM | 0 (0) | 0 (0) | 0 (0) | 0 (0) | 0 (0) | |||||||
CoC | 0 (0) | 6 (12) | 0 (0) | 0 (0) | 6 (12) | |||||||
Test data (n=50) | ||||||||||||
MoP | 20 (40) | 2 (4) | 0 (0) | 0 (0) | 22 (44) | |||||||
CoP | 0 (0) | 26 (52) | 0 (0) | 0 (0) | 26 (52) | |||||||
MoM | 0 (0) | 0 (0) | 0 (0) | 1 (2) | 1 (2) | |||||||
CoC | 0 (0) | 1 (2) | 0 (0) | 0 (0) | 1 (2) |
aAccuracy: 92% (95% CI: 80.5%-97.3%); precision: 92% (95% CI 80.5%-97.3%); recall: 92% (95% CI 80.5%-97.3%); F1-score: 92% (95% CI 80.5%-97.3%).
bMoP: metal-on-polyethylene
cCoP: ceramic-on-polyethylene.
dMoM: metal-on-metal.
eCoC: ceramic-on-ceramic.
Discussion
Principal Findings
In this study, we applied the MedTagger-THA algorithms developed at Mayo Clinic to the THA operative notes at Michigan Medicine and the University of Iowa. The algorithms were implementable, usable, and portable, with high performances at both deployment sites. Model refinements for major or recurring errors further improved the accuracy. In NLP reimplementation studies, refinement of the original model to “adapt” to the local health care system is important for the portability of the EHR models. We plan to validate MedTagger-THA in different hospital settings and EHRs and integrate these adapted models back into the original model. We expect that the continuous model refinement will further enhance portability.
We learned many important lessons from the NLP deployment and evaluation across different institutions. When assessing implementability, we encountered several workforce-related, institutional policy–related, and data infrastructure–related challenges and gaps. First, successful deployment and evaluation require at least three types of expertise: orthopedic domain knowledge of total joint arthroplasty, ETL skills, and expertise in NLP and model evaluation. We observed variable expertise at different sites and a strong need for multidisciplinary team science collaboration. Second, institutional policies have a significant impact on the time and effort related to the exchange of informatics resources. For example, the process of obtaining security clearances for sharing NLP systems to a locally secured environment could range from days to months depending on institutional policies. We also discovered a variation of strictness among institutions for sharing the NLP results for error analysis and refinement, suggesting the need for early planning and communication for multisite NLP research beyond just a multi-institutional IRB. The third aspect is the maturity of ETL and data infrastructure. There is substantial variation in institutional ETL processes and personnel training because of different data infrastructures. An institution with lower data infrastructure maturity would involve a manual abstraction process as an alternative, which can be a huge barrier for high-throughput NLP solutions. Specifically, the data infrastructure at Mayo Clinic is a centralized unified data platform, a duplication of the Epic Clarity table for handling various data retrieval requests in a central location. In contrast, Iowa has several decentralized enterprise data warehouses that require multiple ETL processes for data retrieval. Michigan maintains a separate research data warehouse for clinical and translational research, with a separate ETL pipeline to populate the warehouse with structured and free-text data. The aforementioned findings indicate the high complexity and dynamics of the multi-institutional EHR environment and suggest the need for a situated contextual understanding of multisite clinical NLP research.
When assessing usability and portability, there are some caveats in the process of NLP model refinement. We noticed that giving priorities to sections that related to “procedures” reduced the ambiguous cases. The headers of these sections may vary from site to site and require curation by medical experts to guarantee semantic interoperability. It is always possible to add curated keywords to the keyword list; however, these keywords may not be compatible with the original settings. For example, the negation algorithm was adopted from ConText [
]. “Posterior THA precautions” and “posterior THA” were considered “negated” in the original MedTagger-THA algorithms, as “precautions” is an indicator of “possible” instead of “positive” certainty according to ConText [ ]. However, these mentions were indications of the posterior approach in Michigan’s data. We also changed the rules for identifying fixation better in Michigan’s data; however, we were not sure whether these changes would compromise the model performance at Mayo Clinic. These observations indicate the need to differentiate portable components of the model from institution-specific components that do not generalize well across institutions. Therefore, in the future refinement of MedTagger-THA, we suggest that a panel of medical experts and abstraction specialists from both the development site and validation and deployment sites should determine which changes can be incorporated into the original model for further distribution and better portability and which changes should be retained at the local validation site for institution-specific performance improvements.We also noticed that approach and fixation were not unique mentions in THA notes. Keywords for the THA approach can be mentioned in other procedures, such as total knee arthroplasty, PAO, and arthroscopy, although those descriptions were not related to THA. As MedTagger-THA extracted information based on keyword mentions and rules defined by a series of regular expressions, we should acknowledge that the model should only be applied to THA notes. Therefore, before applying the MedTagger-THA model, it is necessary to filter out the non-THA operative notes. This process is relatively straightforward using text-based search and filtering, as the procedure names are usually explicitly mentioned in the “procedure” section.
MedTagger-THA algorithms are very useful for identifying THA-related data elements; however, they have several important limitations. MedTagger-THA was developed based on keywords and classification rules. Although we were able to extract keywords mentioned if the misspelled keywords were found during curation and training, future versions of MedTagger-THA should incorporate a validated spell check and correction model. In addition, MedTagger-THA cannot recognize hypothetical alternate treatment plans, such as whether the procedure was actually performed or merely documented as differentially discussed. MedTagger-THA links concepts by their locations in the texts (eg, Cement Concept close to Stem Concept means the stem is cemented) but cannot process the contextualized information (eg, 2 concepts were not related to each other). To solve these problems, we plan to conduct future research focusing on understanding the contextualized information when performing named entity recognition tasks using more advanced NLP techniques, such as methods based on machine learning, including deep learning models. Finally, for the Iowa site, the data for algorithm validation and refinement may be biased from the Iowa population of patients with THA because of the small sample size (n=100) and only one annotator being involved. Validation and refinement using small sample sizes may be valid in centers where clinical practice variability is low and thus, might increase accessibility to NLP-based tools where data infrastructural resources are limited or in development.
Conclusions
In conclusion, MedTagger-THA algorithms were sufficiently implementable, usable, and portable to different deployment sites for approach and fixation identification from THA notes. Bearing surface identification may be subject to greater variability in clinical practice patterns and surgical devices. As expected, model refinement within unique institutional EHRs is useful for improving accuracy. This study underscores the importance of undertaking such model refinements in institutional settings and informs future implementation efforts to enhance transferability across institutions.
Acknowledgments
The work was supported by Hilal Maradit Kremers’ National Institutes of Health grant (R01 AR73147), with Michigan Medicine and the University of Iowa as subaward sites. The content of this study is solely the responsibility of the authors and does not necessarily represent the official views of the University of Michigan or the University of Iowa.
The authors would like to acknowledge He Jintao, MS, for his contribution to compiling the natural language processing modules at the Iowa site.
Authors' Contributions
VGVV, SS, HMK, MC, and RH conceived and designed this study. SF and PH developed the models. PH wrote the first draft, and all authors helped with interpreting the results and with the final review of the manuscript.
Conflicts of Interest
BRH's employer receives partial salary support from Blue Cross Blue Shield of Michigan for their work as Co-Director of MARCQI.
Section headers in operative notes, headers related to “procedures” and updated keyword lists, and classification rules for the total hip arthroplasty approach and fixation classification (Michigan).
DOCX File , 28 KBReferences
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Abbreviations
EHR: electronic health record |
ETL: extract, transform, and load |
IRB: institutional review board |
MARCQI: Michigan Arthroplasty Registry Collaborative Quality Initiative |
NLP: natural language processing |
PAO: periacetabular osteotomy |
THA: total hip arthroplasty |
Edited by T Hao; submitted 21.03.22; peer-reviewed by J Shi, M Torii; comments to author 04.05.22; revised version received 30.05.22; accepted 12.07.22; published 31.08.22
Copyright©Peijin Han, Sunyang Fu, Julie Kolis, Richard Hughes, Brian R Hallstrom, Martha Carvour, Hilal Maradit-Kremers, Sunghwan Sohn, VG Vinod Vydiswaran. Originally published in JMIR Medical Informatics (https://medinform.jmir.org), 31.08.2022.
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