Literature DB >> 30866099

Development of predictive regression model for perceived hair breakage in Indian consumers.

Vaibhav Kaushik1, Pratiksha Nihul1, Sudhakar Mhaskar1.   

Abstract

OBJECTIVE: To predict consumer-perceived hair breakage based on parameters from three distinct categories 1) hair strand parameters-like curvature, stiffness and tensile strength indices; 2) hair matrix or bulk parameters-like smoothness, detangling, frizz & volume and; 3) biological factors like age, hair density.
METHODS: Consumer-relevant evaluation techniques were employed in a uniquely designed protocol to obtain real-life data from the consumers' head without impacting or damaging their hair. Hairs of 50 Indian female subjects in the age group of 20-40 years were characterized using various instrumental techniques for parameters mentioned above, apart from the hair breakage count. Multiple regression analysis was performed over the data collected to arrive at a regression equation connecting the hair breakage observed with the key parameters impacting hair breakage. Validation of the model was performed by collecting additional set of hair characterization data for 18 Indian subjects with same recruitment parameters.
RESULTS: A second order, non-linear multi-regression equation was proposed for consumer-perceived hair breakage with five predictors. A reasonable correlation (R2 = 0.76) was observed between predicted and observed consumer hair breakage values for the validation set. Apart from the hair surface lubrication parameters (smoothness and detangling forces), inherent extensional strength parameters and biologically relevant parameter - hair density - were found to influence the consumer hair breakage. The proposed model offers different insights into the interplay of parameter. The impact of the key parameters was documented on the consumer hair breakage and the same was found to fit well with the available knowledge.
CONCLUSIONS: Current work demonstrates the usefulness of regression modelling in understanding complex consumer-relevant parameters by taking a holistic view of consumer hair breakage as a combination of various parameters measured individually at lab scale. The proposed regression equation serves as a tool for product developers to understand the physical parameters of impact when it comes to consumer-perceived hair breakage and make required changes to the formulation. The method presented can be used to develop model for subjects from other geographies and eventually a generalized model can be proposed.
© 2019 Society of Cosmetic Scientists and the Société Française de Cosmétologie.

Entities:  

Keywords:  Consumer-relevant protocol; hair breakage; regression model

Mesh:

Year:  2019        PMID: 30866099     DOI: 10.1111/ics.12527

Source DB:  PubMed          Journal:  Int J Cosmet Sci        ISSN: 0142-5463            Impact factor:   2.970


  1 in total

1.  Alternative Protocol for Hair Damage Assessment and Comparison of Hair Care Treatments.

Authors:  Vaibhav Kaushik; Ritesh Chogale; Sudhakar Mhaskar
Journal:  Int J Trichology       Date:  2020-04-09
  1 in total

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