Users of any laser diffraction system, including the Mastersizer 3000 and Mastersizer 3000E, know that there are numerous factors which contribute to the quality of the data achieved. Without suitable attention paid to controlling each of these factors, data quality issues can arise which can impact the accuracy and reliability of the measured particle size distribution (PSD).
Receiving training in best practice for method development and setting up measurements in particle size analysis by laser diffraction is certainly important. Malvern Panalytical provide user training and educational resources to Mastersizer users with this in mind. Reinforcement of these learnings and provision of on-going support is also extremely valuable in allowing users to establish confidence in working with PSD data and spotting their own data quality issues.
However, as with any training process, its success relies on the learnings being retained by instrument operators and educational resources to have been engaged with. Similarly, turnover in trained staff can lead to an overall reduction in skill levels and knowledge within organisations.
So, why not build best practice and on-going support into particle size analysis software?
Malvern Panalytical have now done just that for the Mastersizer 3000 and Mastersizer 3000E Extended with the new software add-on, Data Quality Guidance.
When Data Quality Guidance is purchased, a licence key is provided to unlock new functionality to support users to achieve the best quality data. In this technical note, we summarise this new functionality with examples relevant to version 4.1 of the Mastersizer 3000 Full/Extended software.
Users of any laser diffraction system, including the Mastersizer 3000 and Mastersizer 3000E, know that there are numerous factors which contribute to the quality of the data achieved. Without suitable attention paid to controlling each of these factors, data quality issues can arise which can impact the accuracy and reliability of the measured particle size distribution (PSD).
Receiving training in best practice for method development and setting up measurements in particle size analysis by laser diffraction is certainly important. Malvern Panalytical provide user training and educational resources to Mastersizer users with this in mind. Reinforcement of these learnings and provision of on-going support is also extremely valuable in allowing users to establish confidence in working with PSD data and spotting their own data quality issues.
However, as with any training process, its success relies on the learnings being retained by instrument operators and educational resources to have been engaged with. Similarly, turnover in trained staff can lead to an overall reduction in skill levels and knowledge within organisations.
So, why not build best practice and on-going support into particle size analysis software?
Malvern Panalytical have now done just that for the Mastersizer 3000 and Mastersizer 3000E Extended with the new software add-on, Data Quality Guidance.
When Data Quality Guidance is purchased, a licence key is provided to unlock new functionality to support users to achieve the best quality data. In this technical note, we summarise this new functionality with examples relevant to version 4.1 of the Mastersizer 3000 Full/Extended software.
A summary of improvements made by Data Quality Guidance to the Mastersizer 3000 Full/Extended software within version 4.1 is presented in Table 1.
The key changes when a Data Quality Guidance licence are present are:
Version 4.1 of the Mastersizer 3000 Full/Extended software also introduces data quality features for all users – irrespective of whether they have a Data Quality Guidance licence. These changes improve ease of use of the Mastersizer 3000 Full/Extended software for everyone, but they are particularly useful when you have a Data Quality Guidance licence. These features are:
Existing Mastersizer 3000 Full/Extended Software (v4.1 without licence) | NEW Data Quality Guidance (v 4.1 with licence) | ||
---|---|---|---|
Quality Checks | Background | Standard Detector 1 below 200, Detector 20 below 20, Detector 15 is less than Detector 1 | Comprehensive Includes machine learning algorithms (static and dynamic) to assess background quality, spotting issues which are hard to detect via visual method |
Sample Measurement | Comprehensive (Obscuration, alignment, negative data, data fit, fine powder mode suitability) | Comprehensive (Obscuration, alignment, negative data, data fit, fine powder mode suitability) | |
Dataset Variability | Comprehensive ISO USP Manual % RSD limits | Comprehensive ISO USP Manual % RSD limits | |
Advice Information | Cause | Standard Limited advice to only one cause | Clearer with more informative
User can view all potential causes Highlights the most likely cause initially and provide quick fix option first |
Resolution | Standard e.g “More sample may improve reproducibility” | Clearer with more information
e.g “Increase the amount of sample” | |
When is guidance provided? | Post Measurement
Post measurement only | Immediate After background measurement After sample measurement After dataset completion Post measurement | |
User interaction | During Measurement Tab | No | Yes |
Report Tab | Yes | Yes, with improved visibility | |
Link to more information? | No | Yes | |
Table 1: Summary of improvements made to Mastersizer 3000 Full/Extended software by Data Quality Guidance |
Data Quality Guidance introduces a new tab at the right-hand side of the Measurement Manager window. This new tab is the location where all data quality information is provided during the measurement workflow.
This tab displays data quality information for the following:
Without Data Quality Guidance, assessments of background data quality are limited to assessments of scattering signals at select detectors. A poor background data warning, possible window or dispersant contamination, is displayed if:
Data Quality Guidance introduces the assessment of background data with machine learning algorithms. Dynamic and static data assessment is performed:
Possible causes to each issue are listed (ordered from most to least likely) and easy to follow steps to resolve the issue are provided.
Example warnings provided for background measurements are shown in Figure 2.
Without Data Quality Guidance, limited guidance is provided with respect to identifying possible causes to data quality issues and suggesting solutions to these issues.
Data Quality Guidance improves on this by indicating possible causes to each issue (ordered from most to least likely) as soon as they are identified and providing easy to follow steps to resolve the issue.
Example warnings provided for sample measurements and the associated statements for cause/solution are shown in Figure 3.
The appearance of the post measurement, record specific Data Quality reports has been altered slightly to allow for implementation of Data Quality Guidance. These alterations will be visible irrespective of whether you have a Data Quality Guidance licence or not.
Comparing Figures 4 (pre-version 4.1 Full/Extended) and Figure 5 (version 4.1 Full/Extended, no Data Quality Guidance), the key changes observed are:
With Data Quality Guidance, additional background data quality information is also reported to give a comprehensive overview of data quality information for each record selected – see Figure 6. Issue, cause, and solution information is provided. Separate visual indicators are provided for background and sample measurements, along with the overall data quality assessment.
Version 4.1 of the Mastersizer 3000 Full/Extended software introduces the ability to assess data variability using manual %RSD limits – irrespective of whether you have a Data Quality Guidance licence. This complements the existing functionality to assess against ISO and USP criteria.
This is achieved through the addition of the ‘Manual %RSD tab’. The maximum %RSD limits for three percentiles can be specified – the default percentiles are Dv10, Dv50 and Dv90 as shown in Figure 7.
The software will indicate if the sample %RSDs are below the limits (a pass as in Figure 7) or exceed the limits (a fail as in Figure 8).
These percentiles can be changed to others besides Dv10, Dv50 and Dv90. For example, Figure 9 shows a case where Dv20, Dv50 and Dv80 have been evaluated.